transient performance of power systems with distributed

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Transient Performance of Power Systems with Distributed Power-Imbalance Allocation Control Kaihua Xi a,* , Hai Xiang Lin b , Jan H. van Schuppen b a School of Mathematics, Shandong University, Jinan, 250100, Shandong, China b Delft Institute of Applied Mathematics, Delft University of Technology, Van Mourik Broekmanweg 6, 2628 XE Delft, The Netherlands. Abstract We investigate the sensitivity of the transient performance of power systems controlled by Distributed Power-Imbalance Allocation Control (DPIAC) on the coe๏ฌƒcients of the control law. We measure the transient performance of the frequency deviation and the control cost by the H 2 norm. Analytic formulas are derived for the H 2 norm of the transient performance of a power system with homogeneous parameters and with a communication network of the same topology as the power network. It is shown that the transient performance of the frequency can be greatly improved by accelerating the convergence to the optimal steady state through the control gain coe๏ฌƒcients, which however requires a higher control cost. Hence, in DPIAC, there is a trade-o๏ฌ€ between the frequency deviation and the control cost which is determined by the control gain coe๏ฌƒcients. In addition, by increasing one of the control gain coe๏ฌƒcients, the behavior of the state approaches that of a centralized control law. These analytical results are validated through a numerical simulation of the IEEE 39-bus system in which the system parameters are heterogeneous. Keywords: Secondary frequency control, Transfer matrix, H 2 norm, Control gain coe๏ฌƒcients, Overshoot. 1. Introduction The power system is expected to keep the frequency within a small range around the nominal value so as to avoid damages to electrical devices. This is accomplished by regulating the active power injection of sources. Three forms of frequency control can be distinguished from fast to slow timescales, i.e., primary control, secondary control, and tertiary control [1, 2]. Primary frequency control has a control objective to maintain the synchronization of the frequency based on local feedback at each power generator. However, the synchronized frequency of the entire power system with primary controllers may still deviate from its nominal value. Secondary frequency control restores the synchronized frequency to its nominal value and is operated on a slower time scale than primary control. Based on the predicted power demand, tertiary control determines the set points for both primary and secondary control over a longer period than used in secondary control. The operating point is usually the solution of an optimal power ๏ฌ‚ow problem. The focus of this paper is on the secondary frequency which has been traditionally actuated by the passivity-based method Automatic Genertaion Control (AGC) for half a century. Re- cently, considering the on-line economic power dispatch in the โ˜… This work is supported in part by the research project of the Fundamental Research Funds of Shandong University under Grant 2018HW028 and in part by the Foundation for Innovative Research Groups of National Natural Science Foundation of China under Grant 61821004. * Corresponding author Email addresses: [email protected] (Kaihua Xi), [email protected] (Hai Xiang Lin), [email protected] (Jan H. van Schuppen) secondary frequency control between all the controllers in the power system [2], various control methods are proposed for the secondary frequency control. These include passivity-based centralized control methods such as Gather-Broadcast Control [3], and distributed control methods such as the Distributed Average Integral (DAI)[4], primal-dual algorithm based dis- tributed method such as the Economic Automatic Generation Control (EAGC) [5], Uni๏ฌed Control [6] etc.. However, the primary design objectives of these methods focus on the steady state only. As investigated in our previous study in [7], the corresponding closed-loop system may have a poor transient performance even though the control objective of reaching the steady state is achieved, e.g. [8, 7]. For example, from the global perspective of the entire power system, the passivity based methods, e.g., AGC, GB and DAI, are actually a form of integral control. A drawback of integral control is that large integral-gain coe๏ฌƒcients may result in extra oscillations due to the overshoot of the control input while small gain coe๏ฌƒ- cients result in a slow convergence speed towards a steady state. For instance, an overshoot problem occurred after the blackout which happened in UK in August 2019 [9]. The continuous increase of integration of renewable energy into the power systems, which may bring serious ๏ฌ‚uctuations, asks for more attentions on the transient performance of the power systems. For the secondary frequency control, the way to improve the transient performance of the traditional methods is to tune the control gain coe๏ฌƒcients either by obtaining satisfac- tory eigenvalues of the linearized closed-loop system or by us- ing a control law based on H 2 or H โˆž control synthesis [10, 11]. However, besides the complicated computations, the improve- ment of the transient performance is still limited because it also Preprint submitted to Elsevier November 18, 2021 arXiv:1910.11554v2 [math.OC] 7 Mar 2021

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Page 1: Transient Performance of Power Systems with Distributed

Transient Performance of Power Systemswith Distributed Power-Imbalance Allocation Control

Kaihua Xia,โˆ—, Hai Xiang Linb, Jan H. van Schuppenb

aSchool of Mathematics, Shandong University, Jinan, 250100, Shandong, ChinabDelft Institute of Applied Mathematics, Delft University of Technology, Van Mourik Broekmanweg 6, 2628 XE Delft, The Netherlands.

Abstract

We investigate the sensitivity of the transient performance of power systems controlled by Distributed Power-Imbalance AllocationControl (DPIAC) on the coefficients of the control law. We measure the transient performance of the frequency deviation and thecontrol cost by the H2 norm. Analytic formulas are derived for the H2 norm of the transient performance of a power system withhomogeneous parameters and with a communication network of the same topology as the power network. It is shown that thetransient performance of the frequency can be greatly improved by accelerating the convergence to the optimal steady state throughthe control gain coefficients, which however requires a higher control cost. Hence, in DPIAC, there is a trade-off between thefrequency deviation and the control cost which is determined by the control gain coefficients. In addition, by increasing one of thecontrol gain coefficients, the behavior of the state approaches that of a centralized control law. These analytical results are validatedthrough a numerical simulation of the IEEE 39-bus system in which the system parameters are heterogeneous.

Keywords: Secondary frequency control, Transfer matrix, H2 norm, Control gain coefficients, Overshoot.

1. Introduction

The power system is expected to keep the frequency withina small range around the nominal value so as to avoid damagesto electrical devices. This is accomplished by regulating theactive power injection of sources. Three forms of frequencycontrol can be distinguished from fast to slow timescales, i.e.,primary control, secondary control, and tertiary control [1, 2].Primary frequency control has a control objective to maintainthe synchronization of the frequency based on local feedbackat each power generator. However, the synchronized frequencyof the entire power system with primary controllers may stilldeviate from its nominal value. Secondary frequency controlrestores the synchronized frequency to its nominal value and isoperated on a slower time scale than primary control. Basedon the predicted power demand, tertiary control determines theset points for both primary and secondary control over a longerperiod than used in secondary control. The operating point isusually the solution of an optimal power flow problem.

The focus of this paper is on the secondary frequency whichhas been traditionally actuated by the passivity-based methodAutomatic Genertaion Control (AGC) for half a century. Re-cently, considering the on-line economic power dispatch in the

โ˜…This work is supported in part by the research project of the FundamentalResearch Funds of Shandong University under Grant 2018HW028 and in partby the Foundation for Innovative Research Groups of National Natural ScienceFoundation of China under Grant 61821004.

โˆ—Corresponding authorEmail addresses: [email protected] (Kaihua Xi), [email protected]

(Hai Xiang Lin), [email protected] (Jan H. vanSchuppen)

secondary frequency control between all the controllers in thepower system [2], various control methods are proposed forthe secondary frequency control. These include passivity-basedcentralized control methods such as Gather-Broadcast Control[3], and distributed control methods such as the DistributedAverage Integral (DAI)[4], primal-dual algorithm based dis-tributed method such as the Economic Automatic GenerationControl (EAGC) [5], Unified Control [6] etc.. However, theprimary design objectives of these methods focus on the steadystate only. As investigated in our previous study in [7], thecorresponding closed-loop system may have a poor transientperformance even though the control objective of reaching thesteady state is achieved, e.g. [8, 7]. For example, from theglobal perspective of the entire power system, the passivitybased methods, e.g., AGC, GB and DAI, are actually a formof integral control. A drawback of integral control is that largeintegral-gain coefficients may result in extra oscillations dueto the overshoot of the control input while small gain coeffi-cients result in a slow convergence speed towards a steady state.For instance, an overshoot problem occurred after the blackoutwhich happened in UK in August 2019 [9].

The continuous increase of integration of renewable energyinto the power systems, which may bring serious fluctuations,asks for more attentions on the transient performance of thepower systems. For the secondary frequency control, the way toimprove the transient performance of the traditional methods isto tune the control gain coefficients either by obtaining satisfac-tory eigenvalues of the linearized closed-loop system or by us-ing a control law based on H2 or Hโˆž control synthesis [10, 11].However, besides the complicated computations, the improve-ment of the transient performance is still limited because it also

Preprint submitted to Elsevier November 18, 2021

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depends on the structure of the control laws. In order to improvethe transient performance, sliding-mode-based control laws,e.g.,[12, 13] and fuzzy control-based control laws,e.g., [14]are proposed, which are all able to shorten the transient phasewithout the overshoot. However, those control laws use eithercentralized or decentralized control structure without consider-ing economic power dispatch. Concerning the transient perfor-mance and the balance of the advantages of the centralized anddistributed control structure, the authors have proposed a multi-level control method, Multi-Level Power-Imbalance AllocationControl (MLPIAC) [15] for the secondary frequency control,which is suitable for large scale power systems. There are twospecial cases of MLPIAC, a centralized control called Gather-Broadcast Power-Imbalance Allocation Control (GBPIAC),and a distributed control called Distributed Power-ImbalanceAllocation Control (DPIAC). Numerical study with comparisonto the existing methods show that the overshoot problem canbe avoided by MLPIAC, thus the transient performance can beimproved by accelerating the convergence of the state [7, 15].However, the analysis is incomplete, which lacks of quantifyingthe impact of these control coefficients on the transient perfor-mance.

The H2 norm of a time-invariant linear input-output systemreflects the response of the output to the input, which has beenwidely used to study the response of power systems to distur-bances, e.g., the performance analysis of secondary frequencycontrol methods in [16, 8, 17, 18], the optimal virtual inertiaplacement in Micro-Grids [19], and the cyber network designfor secondary frequency control [20].

In this paper, we focus on the distributed control law DPIAC,and analyze the impact of the control coefficients on the tran-sient performance of the frequency deviation and the controlcost after a disturbance. For comparison with DPIAC, we alsoinvestigate the transient performance of the centralized controlmethod GBPIAC. We measure the transient performance by theH2 norm. We will show analytically and numerically that (1)the transient performance can be improved by tuning the controlgain coefficients monotonically; (2) there is a trade-off betweenthe transient performance of frequency deviation and the con-trol cost, which is determined by the control coefficients; and(3) the performance of the distributed control approaches to thatof the centralized control as a gain coefficient is increased. Themain contributions of this paper are,

(i) analytic formulas for how the transient performance of thefrequency deviation and the control cost depends on thecontrol gain coefficients;

(ii) a numerical study of the transient performance and its de-pendence on the control gain coefficients.

The paper is organized as follows. We first introduce themodel model of the power system, GBPIAC and DPIAC in sec-tion 2, then formulate the problem of this paper with introduc-tion of the H2 norm in section 3. We calculate the correspond-ing H2 norms and analyze the impact of the control coefficientson the transient performance of the frequency deviation and thecontrol cost in section 4 and verify the analysis by simulationsin section 5. Finally, we conclude with remarks in section 6.

2. The secondary frequency control laws

The transmission network of a power system can be de-scribed by a graph G = (V, E) with nodes V and edgesE โŠ† V ร— V, where a node represents a bus and edge (๐‘–, ๐‘—)represents the direct transmission line between node ๐‘– and ๐‘— .The buses can connect to synchronous machines, frequency de-pendent power sources (or loads), or passive loads. We focuson a power system with loss-less transmission lines and denotethe susceptance of the transmission line by ๏ฟฝ๏ฟฝ๐‘– ๐‘— for (๐‘–, ๐‘—) โˆˆ E.The set of the buses of the synchronous machines, of fre-quency dependent power sources, of passive loads are denotedby V๐‘€ ,V๐น ,V๐‘ƒ respectively, thus V = V๐‘€ โˆช V๐น โˆช V๐‘ƒ . Thedynamics of the system can be modelled by the following Dif-ferential Algebraic Equations (DAEs), e.g., [3, 7],

ยค\๐‘– = ๐œ”๐‘– , ๐‘– โˆˆ V๐‘€ โˆชV๐น , (1a)

๐‘€๐‘– ยค๐œ”๐‘– = ๐‘ƒ๐‘– โˆ’ ๐ท๐‘–๐œ”๐‘– โˆ’โˆ‘๐‘—โˆˆV

๐พ๐‘– ๐‘— sin (\๐‘– โˆ’ \ ๐‘— ) + ๐‘ข๐‘– , ๐‘– โˆˆ V๐‘€ ,

(1b)

0 = ๐‘ƒ๐‘– โˆ’ ๐ท๐‘–๐œ”๐‘– โˆ’โˆ‘๐‘—โˆˆV

๐พ๐‘– ๐‘— sin (\๐‘– โˆ’ \ ๐‘— ) + ๐‘ข๐‘– , ๐‘– โˆˆ V๐น ,

(1c)

0 = ๐‘ƒ๐‘– โˆ’โˆ‘๐‘—โˆˆV

๐พ๐‘– ๐‘— sin (\๐‘– โˆ’ \ ๐‘— ), ๐‘– โˆˆ V๐‘ƒ , (1d)

where \๐‘– is the phase angle at node ๐‘–, ๐œ”๐‘– is the frequency devi-ation from the nominal value (e.g., 50 or 60 Hz), ๐‘€๐‘– > 0 is themoment of inertia of the synchronous machine, ๐ท๐‘– > 0 is thedroop control coefficient, ๐‘ƒ๐‘– is the power supply (or demand),๐พ๐‘– ๐‘— = ๏ฟฝ๏ฟฝ๐‘– ๐‘—๐‘‰๐‘–๐‘‰ ๐‘— is the effective susceptance of the transmissionline between node ๐‘– and ๐‘— , ๐‘‰๐‘– is the voltage, ๐‘ข๐‘– is the input forthe secondary control. The nodes in V๐‘€ and V๐น are assumedto be equipped with secondary frequency controllers, denotedby V๐พ = V๐‘€ โˆช V๐น . Since the control of the voltage andthe frequency can be decoupled when the transmission lines arelossless [21], we do not model the dynamics of the voltages andassume the voltages are constant which can be derived from apower flow calculation [1].

The synchronized frequency deviation can be expressed as

๐œ”๐‘ ๐‘ฆ๐‘› =

โˆ‘๐‘–โˆˆV ๐‘ƒ๐‘– +

โˆ‘๐‘–โˆˆV๐พ ๐‘ข๐‘–โˆ‘

๐‘–โˆˆV๐‘€โˆชV๐น ๐ท๐‘–. (2)

The condition ๐œ”๐‘ ๐‘ฆ๐‘› = 0 at a steady state can be satisfied bysolving the economic power dispatch problem in the secondaryfrequency control [2],

min๐‘ข๐‘– โˆˆ๐‘…

โˆ‘๐‘–โˆˆV๐พ

๐ฝ๐‘– (๐‘ข๐‘–) (3)

๐‘ .๐‘ก.โˆ‘๐‘–โˆˆV

๐‘ƒ๐‘– +โˆ‘๐‘–โˆˆV๐พ

๐‘ข๐‘– = 0,

where ๐ฝ๐‘– (๐‘ข๐‘–) = 12๐›ผ๐‘–๐‘ข

2๐‘–

represents the control cost at node ๐‘–. Theconstraints on the control input at each node is not included into(3) as in [2, 15] based on the assumption that the constraint of

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the capacity is not triggered by the disturbances in the time-scale of the secondary frequency control. This assumption al-lows the use of the H2 norm in the transient performance anal-ysis.

A necessary condition for the solution of the optimizationproblem (3) is that the marginal costs ๐‘‘๐ฝ๐‘– (๐‘ข๐‘–)/๐‘‘๐‘ข๐‘– of the nodesare all identical, i.e.,

๐›ผ๐‘–๐‘ข๐‘– = ๐›ผ ๐‘—๐‘ข ๐‘— , โˆ€ ๐‘–, ๐‘— โˆˆ V๐พ .

For a secondary control law with the objective of (3), it isrequired that the total control input ๐‘ข๐‘  (๐‘ก) =

โˆ‘๐‘–โˆˆV๐พ ๐‘ข๐‘– con-

verges to the unknown โˆ’๐‘ƒ๐‘  = โˆ’โˆ‘๐‘–โˆˆV ๐‘ƒ๐‘– and the marginal

costs achieve a consensus at the steady state. For the overviewof the secondary frequency control laws, see [22]. To obtaina good transient performance, a fast convergence of the con-trol inputs to the optimal solution of (3) is critical, which mayintroduce the overshoot problem. To avoid the overshoot prob-lem, MLPIAC has been proposed in [15] with two special cases,GBPIAC and DPIAC. In this paper, we focus on the impact ofthe control gain coefficients of DPIAC on the transient perfor-mance and compare with that of GBPIAC. The following as-sumption on the connectivity of the communication network isrequired to realize the coordination control.

Assumption 2.1. For the power system (1), there exists a undi-rected communication network such that all the nodes in V๐พare connected.

The definition of the distributed method DPIAC and the cen-tralized method GBPIAC follow.

Definition 2.2 (GBPIAC). Consider the power system (1),the Gather-Broadcast Power-Imbalance Allocation Control(GBPIAC) law is defined as [15]

ยค[๐‘  =โˆ‘

๐‘–โˆˆV๐‘€โˆชV๐น๐ท๐‘–๐œ”๐‘– , (4a)

ยคb๐‘  = โˆ’๐‘˜1 (โˆ‘๐‘–โˆˆV๐‘€

๐‘€๐‘–๐œ”๐‘– + [๐‘ ) โˆ’ ๐‘˜2b๐‘  , (4b)

๐‘ข๐‘– =๐›ผ๐‘ 

๐›ผ๐‘–๐‘˜2b๐‘  , ๐‘– โˆˆ V๐พ , (4c)

where [๐‘  โˆˆ R, b๐‘  โˆˆ R are state variables of the central con-troller, ๐‘˜1, ๐‘˜2 are positive control gain coefficients, ๐›ผ๐‘– is thecontrol price at node ๐‘– as defined in the optimization problem(3), ๐›ผ๐‘  = (โˆ‘๐‘–โˆˆV๐พ 1/๐›ผ๐‘–)โˆ’1 is a constant.

Definition 2.3 (DPIAC). Consider the power system (1), de-fine the Distributed Power-Imbalance Allocation Control(DPIAC) law as,

ยค[๐‘– = ๐ท๐‘–๐œ”๐‘– + ๐‘˜3

โˆ‘๐‘—โˆˆV๐พ

๐‘™๐‘– ๐‘— (๐‘˜2๐›ผ๐‘–b๐‘– โˆ’ ๐‘˜2๐›ผ ๐‘—b ๐‘— ), (5a)

ยคb๐‘– = โˆ’๐‘˜1 (๐‘€๐‘–๐œ”๐‘– + [๐‘–) โˆ’ ๐‘˜2b๐‘– , (5b)๐‘ข๐‘– = ๐‘˜2b๐‘– , (5c)

for node ๐‘– โˆˆ V๐พ , where [๐‘– โˆˆ R and b๐‘– โˆˆ R are state variablesof the local controller at node ๐‘–, ๐‘˜1, ๐‘˜2 and ๐‘˜3 are positive gain

coefficients, (๐‘™๐‘– ๐‘— ) defines a weighted undirected communicationnetwork with Laplacian matrix (๐ฟ๐‘– ๐‘— )

๐ฟ๐‘– ๐‘— =

{โˆ’๐‘™๐‘– ๐‘— , ๐‘– โ‰  ๐‘— ,โˆ‘๐‘˜โ‰ ๐‘– ๐‘™๐‘–๐‘˜ , ๐‘– = ๐‘— ,

and ๐‘™๐‘– ๐‘— โˆˆ [0,โˆž) is the weight of the communication line con-necting node ๐‘– and ๐‘— . The marginal cost at node ๐‘– is ๐›ผ๐‘–๐‘ข๐‘– =

๐‘˜2๐›ผ๐‘–b๐‘– .

Without the coordination on the marginal costs, DPIAC re-duces to a decentralized control method as follows.

Definition 2.4 (DecPIAC). Consider the power system (1), theDecentralized Power-Imbalance Allocation Control (DecPIAC)is defined as,

ยค[๐‘– = ๐ท๐‘–๐œ”๐‘– , (6a)ยคb๐‘– = โˆ’๐‘˜1 (๐‘€๐‘–๐œ”๐‘– + [๐‘–) โˆ’ ๐‘˜2b๐‘– , (6b)๐‘ข๐‘– = ๐‘˜2b๐‘– , (6c)

for node ๐‘– โˆˆ V๐พ , where ๐‘˜1 and ๐‘˜2 are positive gain coefficients.

For a fast recovery from an imbalance while avoiding theovershoot problem, the control gain coefficient ๐‘˜2 should sat-isfy ๐‘˜2 โ‰ฅ 4๐‘˜1. For details of the configuration of ๐‘˜1 and ๐‘˜2, werefer to [15]. In this paper, we set ๐‘˜2 = 4๐‘˜1 in the followinganalysis so as to simplify the deduction of the explicit formulawhich shows the impact of the control coefficients on the tran-sient performance. For the control procedure and the asymp-totic stability of GBPIAC, DPIAC, see [15]. Fo the control lawMLPIAC, see [15].

3. Problem formulation

With ๐‘˜2 = 4๐‘˜1, there are two control gain coefficients ๐‘˜1 and๐‘˜3 in DPIAC. We focus on the following problem.

Problem 3.1. How do the coefficients ๐‘˜1 and ๐‘˜3 influence thetransient performance of the frequency deviation and controlcost in the system (1) controlled by DPIAC?

To address Problem 3.1, we introduce the H2 norm to mea-sure the transient performance, which is defined as follows.

Definition 3.2. Consider a linear time-invariant system,

ยค๐’™ = ๐‘จ๐’™ + ๐‘ฉ๐’˜, (7a)๐’š = ๐‘ช๐’™, (7b)

where ๐’™ โˆˆ R๐‘›, ๐‘จ โˆˆ R๐‘›ร—๐‘› is Hurwitz, ๐‘ฉ โˆˆ R๐‘›ร—๐‘š, ๐‘ช โˆˆ R๐‘งร—๐‘›,the input is denoted by ๐’˜ โˆˆ R๐‘š and the output of the system isdenoted by ๐’š โˆˆ R๐‘ง . The squared H2 norm of the transfer matrix๐‘ฎ of the mapping (๐‘จ, ๐‘ฉ,๐‘ช) from the input ๐’˜ to the output ๐’š isdefined as

| |๐‘ฎ | |22 = tr(๐‘ฉ๐‘‡๐‘ธ๐‘œ๐‘ฉ) = tr(๐‘ช๐‘ธ๐‘๐‘ช๐‘‡ ), (8a)

๐‘ธ๐‘œ๐‘จ + ๐‘จ๐‘‡๐‘ธ๐‘œ + ๐‘ช๐‘‡๐‘ช = 0, (8b)

๐‘จ๐‘ธ๐‘ + ๐‘ธ๐‘๐‘จ๐‘‡ + ๐‘ฉ๐‘ฉ๐‘‡ = 0, (8c)

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where tr(ยท) denotes the trace of a matrix, ๐‘ธ๐‘œ,๐‘ธ๐‘ โˆˆ R๐‘›ร—๐‘› are theobservability Grammian of (๐‘ช, ๐‘จ) and controllability Gram-mian of (๐‘จ, ๐‘ฉ) respectively [23],[24, chapter 2].

The H2 norm can be interpreted as follows. When theinput ๐’˜ is modeled as the Gaussian white noise such that๐‘ค๐‘– โˆผ ๐‘ (0, 1) for all ๐‘– = 1, ยท ยท ยท , ๐‘š and for all ๐‘– โ‰  ๐‘— , thescalar Brownian motions ๐‘ค๐‘– and ๐‘ค ๐‘— are independent, the ma-trix ๐‘ธ๐‘ฃ = ๐‘ช๐‘ธ๐‘๐‘ช

๐‘‡ is the variance matrix of the output at thesteady state [25, Theorem 1.53], i.e.,

๐‘ธ๐‘ฃ = lim๐‘กโ†’โˆž

๐ธ [๐’š(๐‘ก)๐’š๐‘‡ (๐‘ก)]

where ๐ธ [ยท] denotes the expectation. Thus

โ€–๐‘ฎโ€–22 = tr(๐‘ธ๐‘ฃ ) = lim

๐‘กโ†’โˆž๐ธ [๐’š(๐‘ก)๐‘‡ ๐’š(๐‘ก)] . (9)

For other interpretations, see [26].There are so many parameters which influence the transient

performance of the system that it is hard to deduce an explicitformula of the H2 norm for the closed-loop system when theparameters are heterogeneous. To simplify the analysis and fo-cus on the impact of the control gain coefficients, we make thefollowing assumption.

Assumption 3.3. For GBPIAC and DPIAC, assume that V๐น =

โˆ…, V๐‘ƒ = โˆ… and for all ๐‘– โˆˆ V๐‘€ , ๐‘€๐‘– = ๐‘š > 0, ๐ท๐‘– = ๐‘‘ > 0, ๐›ผ๐‘– =1. For DPIAC, assume that the topology of the communicationnetwork is the same as the one of the power system such that๐‘™๐‘– ๐‘— = ๐พ๐‘– ๐‘— for all (๐‘–, ๐‘—) โˆˆ E.

The frequency dependent nodes are excluded from the modelby this assumption while the nodes of the passive power loadscan be involved into the model in this assumption by Kron Re-duction [27]. From the practical point of view, the analysis withAssumption 3.3 is valuable because it provides us the insight onhow to improve the transient behavior by tuning the control co-efficients. For the general case without the restriction of thisassumption, in which the model includes the frequency depen-dent nodes, we resort to simulations in Section 5.

Since \๐‘– ๐‘— = \๐‘– โˆ’ \ ๐‘— is usually small for relatively small๐‘ƒ๐‘– compared to the line capacity in practice, we approximatesin \๐‘– ๐‘— by \๐‘– ๐‘— as in e.g., [4, 5] to focus on the transient perfor-mance. With Assumption 3.3, rewriting (1) into a vector formby replacing sin \๐‘– ๐‘— by \๐‘– ๐‘— , we obtain

ยค๐œฝ = ๐Ž (10a)๐‘ด ยค๐Ž = โˆ’๐‘ณ๐œฝ โˆ’ ๐‘ซ๐Ž + ๐‘ฉ๐’˜ + ๐’–, (10b)

where ๐œฝ = col(\๐‘–) โˆˆ R๐‘›, ๐‘› denotes the number of nodes in thenetwork, ๐Ž = col(๐œ”๐‘–) โˆˆ R๐‘›, ๐‘ด = diag(๐‘€๐‘–) โˆˆ R๐‘›ร—๐‘›, ๐‘ณ โˆˆ R๐‘›ร—๐‘›is the Laplacian matrix of the network, ๐‘ซ = diag(๐ท๐‘–) โˆˆ R๐‘›ร—๐‘›,๐’– = col(๐‘ข๐‘–) โˆˆ R๐‘›ร—๐‘›. The disturbances of ๐‘ท = col(๐‘ƒ๐‘–) โˆˆ R๐‘›have been modeled by ๐‘ฉ๐’˜ as the inputs with ๐‘ฉ โˆˆ R๐‘›ร—๐‘› and๐’˜ โˆˆ R๐‘› as in Definition 3.2. Here, col(ยท) denotes the columnvector of the indicated elements and diag(๐›ฝ๐‘–) denotes a diago-nal matrix ๐œท = diag({๐›ฝ๐‘– , ๐‘– ยท ยท ยท ๐‘›}) โˆˆ R๐‘›ร—๐‘› with ๐›ฝ๐‘– โˆˆ R. Denotethe identity matrix by ๐‘ฐ๐‘› โˆˆ R๐‘›ร—๐‘› and the ๐‘› dimensional vectorwith all elements equal to one by 1๐‘›.

The transient performance of ๐Ž(๐‘ก) and ๐’–(๐‘ก) are measured bythe H2 norm of the corresponding transfer functions with input๐’˜ and output ๐’š = ๐Ž and ๐’š = ๐’– respectively. The squared H2norms are denoted by | |๐‘ฎ๐‘– (๐Ž, ๐’˜) | |22 and | |๐‘ฎ๐‘– (๐’–, ๐’˜) | |22 where thesub-index ๐‘– = ๐‘ or ๐‘‘ which refers to the centralized methodGBPIAC or the distributed method DPIAC.

4. The transient performance analysis

In this section, we calculate the H2 norms of the frequencydeviation and of the control cost for GBPIAC and DPIAC.

Lemma 4.1. For a symmetric Laplacian matrix ๐‘ณ โˆˆ R๐‘›ร—๐‘›,there exist an invertible matrix ๐‘ธ โˆˆ R๐‘›ร—๐‘› such that

๐‘ธโˆ’1 = ๐‘ธ๐‘‡ , (11a)

๐‘ธโˆ’1๐‘ณ๐‘ธ = ๐šฒ, (11b)

๐‘ธ1 =1โˆš๐‘›

1๐‘›, (11c)

where ๐‘ธ = [๐‘ธ1, ยท ยท ยท ,๐‘ธ๐‘›], ๐šฒ = diag(_๐‘–) โˆˆ R๐‘›ร—๐‘›, ๐‘ธ๐‘– โˆˆ R๐‘› isthe normalized eigenvector of ๐‘ณ corresponding to eigenvalue_๐‘– , thus ๐‘ธ๐‘‡

๐‘–๐‘ธ ๐‘— = 0 for ๐‘– โ‰  ๐‘— . Because ๐‘ณ1๐‘› = 0, _1 = 0 is one

of the eigenvalues with normalized eigenvector ๐‘ธ1.

We study the transient performance of ๐Ž and ๐’– of GBPIACand DPIAC in subsection 4.1 and 4.2 respectively by calculat-ing the corresponding H2 norm. In addition, for DPIAC, wealso calculate a H2 norm which measures the coherence of themarginal costs. The performance of GBPIAC and DPIAC willbe compared in subsection 4.3.

4.1. Transient performance analysis for GBPIAC

By Assumption 3.3, we derive the control input ๐‘ข๐‘– = 1๐‘›๐‘˜1b๐‘  at

node ๐‘– as in (4). With the notations of section 3 and Assumption3.3, and ๐‘˜2 = 4๐‘˜1, we obtain from (10) and (4) the closed-loopsystem of GBPIAC in a vector form as follows.

ยค๐œฝ = ๐Ž, (12a)

๐‘š๐‘ฐ๐‘› ยค๐œ” = โˆ’๐‘ณ๐œฝ โˆ’ ๐‘‘๐‘ฐ๐‘›๐œ” + 4๐‘˜1b๐‘ 

๐‘›1๐‘› + ๐‘ฉ๐’˜, (12b)

ยค[๐‘  = ๐‘‘1๐‘‡๐‘›๐Ž, (12c)ยคb๐‘  = โˆ’๐‘˜1๐‘š1๐‘‡๐‘›๐Ž โˆ’ ๐‘˜1[๐‘  โˆ’ 4๐‘˜1b๐‘  , (12d)

where [๐‘  โˆˆ R and b๐‘  โˆˆ R.For the transient performance of ๐Ž(๐‘ก), ๐’–(๐‘ก) in GBPIAC, the

following theorem can be proved.

Theorem 4.2. Consider the closed-loop system (12) ofGBPIAC with ๐‘ฉ = ๐‘ฐ๐‘›. The squared H2 norm of the frequencydeviation ๐Ž and of the control inputs ๐’– are,

| |๐‘ฎ๐‘ (๐Ž, ๐’˜) | |22 =๐‘› โˆ’ 12๐‘š๐‘‘

+ ๐‘‘ + 5๐‘š๐‘˜1

2๐‘š(2๐‘˜1๐‘š + ๐‘‘)2 , (13a)

| |๐‘ฎ๐‘ (๐’–, ๐’˜) | |22 =๐‘˜1

2. (13b)

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Proof: With the linear transform ๐’™1 = ๐‘ธโˆ’1๐œฝ , ๐’™2 = ๐‘ธโˆ’1๐Ž where๐‘ธ is defined in Lemma 4.1, we derive from (12) that

ยค๐’™1 = ๐’™2,

ยค๐’™2 = โˆ’ 1๐‘š๐šฒ๐’™1 โˆ’

๐‘‘

๐‘š๐‘ฐ๐‘›๐’™2 +

4๐‘˜1b๐‘ 

๐‘š๐‘›๐‘ธโˆ’11๐‘› +

1๐‘š๐‘ธโˆ’1๐’˜,

ยค[๐‘  = ๐‘‘1๐‘‡๐‘›๐‘ธ๐’™2,

ยคb๐‘  = โˆ’๐‘˜1๐‘š1๐‘‡๐‘›๐‘ธ๐’™2 โˆ’ ๐‘˜1[๐‘  โˆ’ 4๐‘˜1b๐‘  ,

where ๐šฒ is the diagonal matrix defined in Lemma 4.1. Since1๐‘› is an eigenvector of ๐‘ณ corresponding to _1 = 0, we obtain๐‘ธโˆ’11๐‘› = [

โˆš๐‘›, 0, ยท ยท ยท , 0]๐‘‡ . Thus the components of ๐’™1 and ๐’™2

can be decoupled as

ยค๐‘ฅ11 = ๐‘ฅ21, (15a)

ยค๐‘ฅ21 = โˆ’ ๐‘‘๐‘š๐‘ฅ21 +

4๐‘˜1

๐‘šโˆš๐‘›b๐‘  +

1๐‘š๐‘ธ๐‘‡1 ๐’˜, (15b)

ยค[๐‘  = ๐‘‘โˆš๐‘›๐‘ฅ21, (15c)

ยคb๐‘  = โˆ’๐‘˜1๐‘šโˆš๐‘›๐‘ฅ21 โˆ’ ๐‘˜1[๐‘  โˆ’ 4๐‘˜1b๐‘  (15d)

and for ๐‘– = 2, ยท ยท ยท , ๐‘›,

ยค๐‘ฅ1๐‘– = ๐‘ฅ2๐‘– , (16a)

ยค๐‘ฅ2๐‘– = โˆ’_๐‘–๐‘š๐‘ฅ1๐‘– โˆ’

๐‘‘

๐‘š๐‘ฅ2๐‘– +

1๐‘š๐‘ธ๐‘‡๐‘– ๐’˜, (16b)

We rewrite the decoupled systems of (15) and (16) in the gen-eral form as (7) with

๐’™ =

๐’™1๐’™2[๐‘ b๐‘ 

, ๐‘จ =

0 ๐‘ฐ๐‘› 0 0โˆ’ ๐šฒ๐‘š

โˆ’ ๐‘‘๐‘š๐‘ฐ๐‘› 0 4๐‘˜1

๐‘šโˆš๐‘›๐’—

0 ๐‘‘โˆš๐‘›๐’—๐‘‡ 0 0

0 โˆ’๐‘˜1๐‘šโˆš๐‘›๐’—๐‘‡ โˆ’๐‘˜1 โˆ’4๐‘˜1

, ๏ฟฝ๏ฟฝ =

0

๐‘ธโˆ’1

๐‘š

00

,where ๐’—๐‘‡ = [1, 0, ยท ยท ยท , 0] โˆˆ R๐‘›. The H2 norm of a state vari-able e.g., the frequency deviation and the control cost, can bedetermined by setting the output ๐‘ฆ as that state variable. Be-cause the closed-loop system (12) is asymptotically stable, ๐‘จ isHurwitz regardless the rotations of the phase angle ๐œฝ .

For the transient performance of ๐Ž(๐‘ก), setting ๐’š = ๐Ž = ๐‘ธ๐’™2and ๐‘ช = [0,๐‘ธ, 0, 0], we obtain the observability Grammian ๐‘ธ๐‘œof (๐‘ช, ๐‘จ) (8b) in the form,

๐‘ธ๐‘œ =

๐‘ธ๐‘œ11 ๐‘ธ๐‘œ12 ๐‘ธ๐‘œ13 ๐‘ธ๐‘œ14๐‘ธ๐‘‡๐‘œ12 ๐‘ธ๐‘œ22 ๐‘ธ๐‘œ23 ๐‘ธ๐‘œ24

๐‘ธ๐‘‡๐‘œ13 ๐‘ธ๐‘‡

๐‘œ23 ๐‘ธ๐‘œ33 ๐‘ธ๐‘œ34๐‘ธ๐‘‡๐‘œ14 ๐‘ธ๐‘‡

๐‘œ24 ๐‘ธ๐‘‡๐‘œ34 ๐‘„๐‘œ44

.Thus,

โ€–๐‘ฎ๐‘ (๐Ž, ๐’˜)โ€–22 = tr(๏ฟฝ๏ฟฝ๐‘‡๐‘ธ๐‘œ ๏ฟฝ๏ฟฝ) =

tr(๐‘ธ๐‘ธ๐‘œ22๐‘ธ๐‘‡ )

๐‘š2 =tr(๐‘ธ๐‘œ22)๐‘š2 . (17)

Because

๐‘ช๐‘‡๐‘ช =

0 0 0 00 ๐‘ฐ๐‘› 0 00 0 0 00 0 0 0

,

the diagonal elements ๐‘ธ๐‘œ22 (๐‘–, ๐‘–) of ๐‘ธ๐‘œ22 can be calculated bysolving the observability Gramian ๏ฟฝ๏ฟฝ๐‘– of (๐‘ช๐‘– , ๐‘จ๐‘–) which satis-fies

๏ฟฝ๏ฟฝ1๐‘จ1 + ๐‘จ๐‘‡1 ๏ฟฝ๏ฟฝ1 + ๐‘ช๐‘‡1 ๐‘ช1 = 0

where

๐‘จ1 =

0 1 0 00 โˆ’ ๐‘‘

๐‘š0 4๐‘˜1

๐‘šโˆš๐‘›

0 ๐‘‘โˆš๐‘› 0 0

0 โˆ’๐‘˜1๐‘šโˆš๐‘› โˆ’๐‘˜1 โˆ’4๐‘˜1

,๐‘ช๐‘‡1 =

0100

and

๏ฟฝ๏ฟฝ๐‘–๐‘จ๐‘– + ๐‘จ๐‘‡๐‘– ๏ฟฝ๏ฟฝ๐‘– + ๐‘ช๐‘‡๐‘– ๐‘ช๐‘– = 0, ๐‘– = 2, ยท ยท ยท , ๐‘›,

where

๐‘จ๐‘– =

[0 1

โˆ’_๐‘–๐‘š

โˆ’ ๐‘‘๐‘š

],๐‘ช๐‘‡๐‘– =

[01

].

In this case, the diagonal elements of ๐‘ธ๐‘œ22 satisfy ๐‘ธ๐‘œ22 (๐‘–, ๐‘–) =๏ฟฝ๏ฟฝ๐‘– (2, 2) for ๐‘– = 1, ยท ยท ยท , ๐‘›. We thus derive from the observabilityGramian ๏ฟฝ๏ฟฝ๐‘– that

tr(๏ฟฝ๏ฟฝ๐‘‡๐‘ธ๐‘œ ๏ฟฝ๏ฟฝ) =๐‘› โˆ’ 12๐‘š๐‘‘

+ ๐‘‘ + 5๐‘š๐‘˜1

2๐‘š(2๐‘˜1๐‘š + ๐‘‘)2 , (18)

which yields (13a) directly. Similarly by setting ๐‘ฆ = ๐‘ข๐‘  (๐‘ก) =

4๐‘˜1b๐‘  (๐‘ก) and ๐‘ช = [0, 0, 0, 4๐‘˜1], we derive the norm of ๐‘ข๐‘  (๐‘ก) as

โ€–๐‘ฎ๐‘ (๐‘ข๐‘  , ๐’˜)โ€–22 =

๐‘˜1๐‘›

2. (19)

With ๐‘ข๐‘– =๐‘ข๐‘ ๐‘›

for ๐‘– = 1, ยท ยท ยท , ๐‘› and โ€–๐’–(๐‘ก)โ€–2 = ๐’–(๐‘ก)๐‘‡ ๐’–(๐‘ก) =โˆ‘๐‘›๐‘– ๐‘ข

2๐‘–(๐‘ก), we further derive(13b) for the control cost. ๏ฟฝ

The norm of ๐Ž(๐‘ก) in (13a) includes two terms. The first onedescribes the relative deviations which depend on the primarycontrol, and the second one describes the overall frequency de-viation of which the suppression is the task of the secondarycontrol. From the proof of Theorem 4.2, it can be observed thatthe relative frequency deviations are derived from the eigen-direction of nonzero eigenvalues, and the overall frequency de-viation from the eigen-direction of the zero eigenvalue.

Remark 4.3. It is demonstrated by Theorem 4.2 that the topol-ogy of the network has no influence on the norm of ๐Ž(๐‘ก) and๐’–(๐‘ก). This is because of Assumption 3.3 and the identicalstrength of the disturbances at all the nodes with ๐‘ฉ = ๐‘ฐ๐‘›.

Remark 4.4. The overall frequency deviation depends on ๐‘˜1while the relative frequency deviation is independent of ๐‘˜1.Hence, the frequency deviation cannot be suppressed to an ar-bitrary small positive value. When the overall frequency de-viation caused by the power imbalance dominates the relativefrequency deviation, a large ๐‘˜1 can accelerate the restorationof the frequency. This will be further described in Section 5.However, a large ๐‘˜1 leads to a high control cost. Hence there isa trade-off between the overall frequency deviation suppressionand control cost, which is determined by ๐‘˜1.

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Theorem 4.2 with ๐‘ฉ = ๐‘ฐ๐‘› includes the assumption that allthe disturbances are independent and of identical strength. Thefollowing theorem describes the impact of the control coeffi-cients with a general ๐‘ฉ where the disturbances are correlatedwith non-identical strength.

Theorem 4.5. Consider the closed-loop system (12) ofGBPIAC with a positive definite ๐‘ฉ โˆˆ R๐‘›ร—๐‘›, the squared H2norm of the frequency deviation ๐Ž and of the control inputs ๐’–satisfy

๐›พ2min๐บ๐‘ โ‰ค ||๐‘ฎ๐‘ (๐Ž, ๐’˜) | |22 โ‰ค ๐›พ2

max๐บ๐‘ , (20a)๐‘˜1

2๐›พ2

min โ‰ค ||๐‘ฎ๐‘ (๐’–, ๐’˜) | |22 โ‰ค ๐‘˜1

2๐›พ2

max, (20b)

where ๐›พmin and ๐›พmax are the smallest and the largest eigenvalueof ๐‘ฉ, and

๐บ๐‘ =(๐‘› โˆ’ 1

2๐‘š๐‘‘+ ๐‘‘ + 5๐‘š๐‘˜1

2๐‘š(2๐‘˜1๐‘š + ๐‘‘)2

).

Proof: Since ๐‘ฉ > 0, then there exist ๐‘ผ and ๐šช such that ๐‘ฉ =

๐‘ผ๐‘‡ ๐šช๐‘ผ where ๐‘ผ is an orthogonal matrix and ๐šช is a diagonalmatrix with the diagonal elements being the eigenvalues of ๐‘ฉ,which are all strictly positive. With the decomposition of ๐‘ฉ,from (17) we derive

trac(๐‘ฉ๐‘‡๐‘ธ๐‘ธ๐‘œ22๐‘„๐‘ฉ

)= trac

(๐‘ผ๐‘‡ ๐šช๐‘ผ๐‘ธ๐‘ธ๐‘œ22๐‘ธ

๐‘‡๐‘ผ๐‘‡ ๐šช๐‘ผ)

= trac(๐šช๐‘ผ๐‘ธ๐‘ธ๐‘œ22๐‘ธ

๐‘‡๐‘ผ๐‘‡ ๐šช)

โ‰ค ๐›พ2maxtrac

(๐‘ผ๐‘ธ๐‘ธ๐‘œ22๐‘ธ

๐‘‡๐‘ผ๐‘‡)

= ๐›พ2maxtrac

(๐‘ธ๐‘œ22

),

Similarly, we derive

๐›พ2mintrac

(๐‘ธ๐‘œ22

)โ‰ค trac

(๐‘ฉ๐‘‡๐‘ธ๐‘ธ๐‘œ22๐‘ธ

๐‘‡ ๐‘ฉ).

From the above inequalities and (17), we can easily follow theprocedure as in the proof of Theorem 4.2 to obtain the traceof ๐‘„๐‘œ22 and further derive the inequalities in (20a). A similarprocedure is conducted to obtain the inequalities in (20b). ๏ฟฝ

It is demonstrated by Theorem 4.5 that when the disturbancesare correlated with non-identical strength, the impact of ๐‘˜1 onthe norm is similar as in the case with identical strength of dis-turbances.

4.2. Transient performance analysis for DPIAC

With Assumption 3.3 and ๐‘˜2 = 4๐‘˜1, we derive the closed-loop system of DPIAC from (10) and (5) as

ยค๐œฝ = ๐Ž, (23a)๐‘š๐‘ฐ๐‘› ยค๐Ž = โˆ’๐‘ณ๐œฝ โˆ’ ๐‘‘๐‘ฐ๐‘›๐Ž + 4๐‘˜1๐ƒ + ๐‘ฉ๐’˜ (23b)

ยค๐œผ = ๐‘ซ๐Ž + 4๐‘˜1๐‘˜3๐‘ณ๐ƒ, (23c)ยค๐ƒ = โˆ’๐‘˜1๐‘ด๐Ž โˆ’ ๐‘˜1๐œผ โˆ’ 4๐‘˜1๐ƒ, (23d)

where ๐œผ = col([๐‘–) โˆˆ R๐‘› and ๐ƒ = col(b๐‘–) โˆˆ R๐‘›. Note that๐‘ณ = (๐ฟ๐‘– ๐‘— ) โˆˆ R๐‘›ร—๐‘› is the weighted Laplacian matrix of the

power network and also of the communication network. Be-cause the differences of the marginal costs can be fully repre-sented by 4๐‘˜1๐‘ณ๐ƒ (๐‘ก), we use the squared norm of (4๐‘˜1๐‘ณ๐ƒ (๐‘ก)) tomeasure the coherence of the marginal costs in DPIAC. Denotethe squared H2 norm of the transfer matrix of (23) with output๐’š = 4๐‘˜1๐‘ณ๐ƒ by | |๐บ๐‘‘ (4๐‘˜1๐ฟb, ๐’˜) | |2. In this subsection, we alsocalculate the squared H2 norm of 4๐‘˜1๐‘ณ๐ƒ as an additional metricfor the influence of ๐‘˜3 on the control cost.

The following theorem states the H2 norms of the frequencydeviation, the control cost and the coherence of the marginalcosts in DPIAC.

Theorem 4.6. Consider the closed-loop system (23) of DPIACwith ๐‘ฉ = ๐‘ฐ๐‘›, the squared H2 norm of ๐Ž(๐‘ก), ๐’–(๐‘ก) and 4๐‘˜1๐‘ณ๐ƒare

โ€–๐‘ฎ๐‘‘ (๐Ž, ๐’˜)โ€–22 =

12๐‘š

๐‘›โˆ‘๐‘–=2

๐‘1๐‘–

๐‘’๐‘–+ ๐‘‘ + 5๐‘š๐‘˜1

2๐‘š(2๐‘˜1๐‘š + ๐‘‘)2 ,

(24a)

โ€–๐‘ฎ๐‘‘ (๐’–, ๐’˜)โ€–22 =

๐‘˜1

2+

๐‘›โˆ‘๐‘–=2

๐‘2๐‘–

๐‘’๐‘–, (24b)

โ€–๐‘ฎ๐‘‘ (4๐‘˜1๐‘ณ๐ƒ, ๐’˜)โ€–22 =

๐‘›โˆ‘๐‘–=2

_2๐‘–๐‘2๐‘–

๐‘š2๐‘’๐‘–, (24c)

where

๐‘1๐‘– = _2๐‘– (4๐‘˜2

1๐‘˜3๐‘š โˆ’ 1)2 + 4๐‘‘๐‘š๐‘˜31

+ ๐‘˜1 (๐‘‘ + 4๐‘˜1๐‘š) (4๐‘‘_๐‘–๐‘˜1๐‘˜3 + 5_๐‘– + 4๐‘‘๐‘˜1),๐‘2๐‘– = 2๐‘‘๐‘˜3

1 (๐‘‘ + 2๐‘˜1๐‘š)2 + 2_๐‘–๐‘˜41๐‘š

2 (4๐‘˜1๐‘˜3๐‘‘ + 4),๐‘’๐‘– = ๐‘‘_

2๐‘– (4๐‘˜2

1๐‘˜3๐‘š โˆ’ 1)2 + 16๐‘‘_๐‘–๐‘˜41๐‘˜3๐‘š

2 + ๐‘‘2_๐‘–๐‘˜1

+ 4๐‘˜1 (๐‘‘ + 2๐‘˜1๐‘š)2 (๐‘‘๐‘˜1 + _๐‘– + ๐‘‘_๐‘–๐‘˜1๐‘˜3).

Proof: Let ๐‘ธ โˆˆ R๐‘›ร—๐‘› be defined as in Lemma 4.1 and let๐’™1 = ๐‘ธโˆ’1๐œฝ , ๐’™2 = ๐‘ธโˆ’1๐Ž, ๐’™3 = ๐‘ธโˆ’1๐œผ, ๐’™4 = ๐‘ธโˆ’1๐ƒ, we obtainthe closed-loop system in the general form as (7) with

๐’™ =

๐’™1๐’™2๐’™3๐’™4

, ๐‘จ =

0 ๐‘ฐ๐‘› 0 0

โˆ’ 1๐‘š๐šฒ โˆ’ ๐‘‘๐‘š ๐‘ฐ๐‘› 0 4๐‘˜1

๐‘š ๐‘ฐ๐‘›0 ๐‘‘๐‘ฐ๐‘› 0 4๐‘˜1๐‘˜3๐šฒ0 โˆ’๐‘˜1๐‘š๐‘ฐ๐‘› โˆ’๐‘˜1๐‘ฐ๐‘› โˆ’4๐‘˜1๐‘ฐ๐‘›

, ๐‘ฉ =

0

๐‘ธโˆ’1

๐‘š00

,where ๐šฒ is the diagonal matrix defined in Lemma 4.1. Each ofthe block matrices in the matrix ๐‘จ is either the zero matrix or adiagonal matrix, so the components of the vector ๐’™1 โˆˆ R๐‘›, ๐’™2 โˆˆR๐‘›, ๐’™3 โˆˆ R๐‘›, ๐’™4 โˆˆ R๐‘› can be decoupled.

With the same method for obtaining (18) in the proof ofTheorem 4.2, setting ๐’š = ๐Ž = ๐‘„๐‘ฅ2, ๐‘ช = [0,๐‘ธ, 0, 0], we de-rive (24a) for ๐Ž(๐‘ก). Then, setting ๐’š(๐‘ก) = ๐’–(๐‘ก) = 4๐‘˜1๐ƒ (๐‘ก) and๐‘ช = [0, 0, 0, 4๐‘˜1๐‘ธ], we derive (24b) for the norm of ๐’–(๐‘ก). Fi-nally for the coherence measurement of the marginal cost, set-ting ๐’š = 4๐‘˜1๐‘ณ๐ƒ and ๐‘ช = [0, 0, 0, 4๐‘˜1๐‘ณ๐‘ธ], we derive (24c).๏ฟฝ

Similar as Theorem 4.5, for a positive definite ๐‘ฉ โˆˆ R๐‘›ร—๐‘›, weobtain the following theorem.

6

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Theorem 4.7. Consider the closed-loop system (23) of DPIACwith a positive definite ๐‘ฉ โˆˆ R๐‘›ร—๐‘›, the squared H2 norm of ๐Ž(๐‘ก),๐’–(๐‘ก) and 4๐‘˜1๐‘ณ๐ƒ satisfy

๐›พ2min๐บ๐‘‘ โ‰ค โ€–๐‘ฎ๐‘‘ (๐Ž, ๐’˜)โ€–2

2 โ‰ค ๐›พ2max๐บ๐‘‘ ,

๐›พ2min (

๐‘˜1

2+

๐‘›โˆ‘๐‘–=2

๐‘2๐‘–

๐‘’๐‘–) โ‰ค โ€–๐‘ฎ๐‘‘ (๐’–, ๐’˜)โ€–2

2 โ‰ค ๐›พ2max (

๐‘˜1

2+

๐‘›โˆ‘๐‘–=2

๐‘2๐‘–

๐‘’๐‘–)

๐›พ2min

๐‘›โˆ‘๐‘–=2

_2๐‘–๐‘2๐‘–

๐‘š2๐‘’๐‘–โ‰ค โ€–๐‘ฎ๐‘‘ (4๐‘˜1๐‘ณ๐ƒ, ๐’˜)โ€–2

2 โ‰ค ๐›พ2max

๐‘›โˆ‘๐‘–=2

_2๐‘–๐‘2๐‘–

๐‘š2๐‘’๐‘–

where ๐›พmin and ๐›พmax are the smallest and the largest eigenvalueof ๐‘ฉ, ๐‘1๐‘– , ๐‘2๐‘– and ๐‘’๐‘– are defined in Theorem 4.6 and

๐บ๐‘‘ =1

2๐‘š

๐‘›โˆ‘๐‘–=2

๐‘1๐‘–

๐‘’๐‘–+ ๐‘‘ + 5๐‘š๐‘˜1

2๐‘š(2๐‘˜1๐‘š + ๐‘‘)2 .

The proof of this theorem follows that of Theorem 4.5. Hence,similar as in GBPIAC, when the disturbances are correlatedwith non-identical strength, the impact of ๐‘˜1 and ๐‘˜3 on thenorms are similar as in the case with identical strength of dis-turbances.

Based on Theorem 4.6, we analyze the impact of ๐‘˜1 and ๐‘˜3on the norms by focusing on 1) the frequency deviation, 2) con-trol cost and 3) coherence of the marginal costs.

4.2.1. The frequency deviationWe first pay attention to the influence of ๐‘˜1 when ๐‘˜3 is fixed.

The norm of ๐Ž also includes two terms in (24a) where the firstone describes the relative frequency oscillation and the secondone describes the overall frequency deviation. The overall fre-quency deviation decreases inversely as ๐‘˜1 increases. Hence,when the overall frequency deviation dominates the relative fre-quency deviation, the convergence can also be accelerated by alarge ๐‘˜1 as analyzed in Remark 4.4 for GBPIAC. From (24a),we derive

lim๐‘˜1โ†’โˆž

| |๐‘ฎ๐‘‘ (๐Ž, ๐’˜) | |22 =1

2๐‘š

๐‘›โˆ‘๐‘–=2

_2๐‘–๐‘˜2

3

๐‘‘_2๐‘–๐‘˜2

3 + ๐‘‘ (1 + 2_๐‘–๐‘˜3), (27)

which indicates that even with a large ๐‘˜1, the frequency devi-ations cannot be decreased anymore when ๐‘˜3 is nonzero. Sosimilar to GBPIAC, the relative frequency deviation cannot besuppressed to an arbitrary small positive value in DPIAC. How-ever, when ๐‘˜3 = 0, DPIAC reduces to DecPIAC (6), thus

โ€–๐‘ฎ๐‘‘ (๐Ž, ๐’˜)โ€–22 โˆผ ๐‘‚ (๐‘˜โˆ’1

1 ). (28)

Remark 4.8. By DecPIAC, it follows from (28) that if all thenodes are equipped with the secondary frequency controllers,the frequency deviation can be controlled to any prespecifiedrange. However, it results in a high control cost for the entirenetwork. In addition, the configuration of ๐‘˜1 is limited by theresponse time of the actuators.

Remark 4.9. This analysis is based on Assumption 3.3 whichrequires that each node in the network is equipped with a sec-ondary frequency controller. However, for the power systemswithout all the nodes equipped with the controllers, the distur-bance from the node without a controller must be compensatedby the other nodes with controllers. In that case, the equilib-rium of the system is changed and the oscillation can never beavoided even when the controllers are sufficiently sensitive tothe disturbances.

When ๐‘˜1 is fixed, it can be easily observed from (24a) thatthe order of ๐‘˜3 in the term ๐‘1๐‘– is 2 which is the same as in theterm ๐‘’๐‘– , thus ๐‘˜3 has little influence on the frequency deviation.

4.2.2. The control costWe first analyze the influence of ๐‘˜1 on the cost and then the

influence of ๐‘˜3. For any ๐‘˜3 โ‰ฅ 0, we derive from (24b) that

โ€–๐‘ฎ๐‘‘ (๐’–, ๐’˜)โ€–22 โˆผ ๐‘‚ (๐‘˜1),

which indicates that the control cost increases as ๐‘˜1 increases.Recalling the impact of ๐‘˜1 on the overall frequency deviationin (24a), we conclude that minimizing the control cost alwaysconflicts with minimizing the frequency deviation. Hence, atrade-off should be determined to obtain the desired frequencydeviation with an acceptable control cost.

Next, we analyze how ๐‘˜3 influences the control cost. From(24b), we obtain that

โ€–๐‘ฎ๐‘‘ (๐’–, ๐’˜)โ€–22 โˆผ ๐‘˜1

2+๐‘‚ (๐‘˜1๐‘˜

โˆ’13 ), (29)

where the second term is positive. It shows that the controlcost decreases as ๐‘˜3 increases due to the accelerated consensusspeed of the marginal costs. This will be further discussed in thenext subsubsection on the coherence of the marginal costs. Notethat ๐‘˜3 has little influence on the frequency deviation. Hencethe control cost can be decreased by ๐‘˜3 without increasing thefrequency deviation much.

4.2.3. The coherence of the marginal costs in DPIACWe measure the coherence of the marginal costs by the norm

of โ€–๐‘ฎ๐‘‘ (4๐‘˜1๐‘ณ๐ƒ, ๐’˜) | |2. From (24c), we obtain

โ€–๐‘ฎ๐‘‘ (4๐‘˜1๐‘ณ๐ƒ, ๐’˜)โ€–22 = ๐‘‚ (๐‘˜โˆ’1

3 ),

which indicates that the difference of the marginal costs de-creases as ๐‘˜3 increases. Hence, this analytically confirms thatthe consensus speed can be increased by increasing ๐‘˜3.

Remark 4.10. In practice, similar to ๐‘˜1, the configuration of๐‘˜3 depends on the communication devices and cannot be arbi-trarily large. In addition, the communication delay and noisealso influence the transient performance, which still needs fur-ther investigation.

7

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4.3. Comparison of the GBPIAC and DPIAC control laws

With a positive ๐‘˜1, we can easily obtain from (13b, 24b) that

โ€–๐‘ฎ๐‘ (๐’–, ๐’˜)โ€– < โ€–๐‘ฎ๐‘‘ (๐’–, ๐’˜) | |, (30)

which is due to the differences of the marginal costs. The differ-ence in the control cost between these two control laws can bedecreased by accelerating the consensus of the marginal costsas explained in the previous subsection. From (24a) and (24b)we derive that

lim๐‘˜3โ†’โˆž

โ€–๐‘ฎ๐‘‘ (๐Ž, ๐’˜)โ€–22 =

๐‘› โˆ’ 12๐‘š๐‘‘

+ ๐‘‘ + 5๐‘š๐‘˜1

2๐‘š(2๐‘˜1๐‘š + ๐‘‘)2 = | |๐‘ฎ๐‘ (๐Ž, ๐’˜) | |2,

lim๐‘˜3โ†’โˆž

โ€–๐‘ฎ๐‘‘ (๐’–, ๐’˜)โ€–22 =

๐‘˜1

2= โ€–๐‘ฎ๐‘ (๐’–, ๐’˜)โ€–2.

Hence, as ๐‘˜3 goes to infinity, the transient performance ofDPIAC converges to that of GBPIAC.

5. Simulations

In this section, we numerically verify the analysis of thetransient performance of DPIAC using the IEEE 39-bus sys-tem as shown in Fig. 1 with the Power System Analy-sis Toolbox (PSAT) [28]. We compare the performance ofDPIAC with that of GBPIAC. For a comparison of DPIACwith the traditional control laws, see [7, 15]. The sys-tem consists of 10 generators, 39 buses, which serves a to-tal load of about 6 GW. As in [15], we change the buseswhich are neither connected to synchronous machines norto power loads into frequency dependent buses. HenceV๐‘€ = {๐บ1, ๐บ2, ๐บ3, ๐บ4, ๐บ5, ๐บ6, ๐บ7, ๐บ8, ๐บ9, ๐บ10}, V๐‘ƒ =

{30, 31, 32, 33, 34, 35, 36, 37, 38, 39} and the other nodes are inset V๐น . The nodes in V๐‘€ โˆชV๐น are all equipped with secondaryfrequency controllers such that V๐พ = V๐‘€ โˆช V๐น . Because thevoltages are constants, the angles of the synchronous machineand the bus have the same dynamics [29]. Except the controlgain coefficients ๐‘˜1 and ๐‘˜3, all the parameters of the power sys-tem, including the control prices, damping coefficients and con-stant voltages are identical to those in the simulations in [15].The communication topology are the same as the one of thepower network and we set ๐‘™๐‘– ๐‘— = 1 for the communication ifnode ๐‘– and ๐‘— are connected. We remark that with these con-figurations of the parameters, Assumption 3.3 is not satisfiedin the simulations. We first verify the impact of ๐‘˜1 and ๐‘˜3 onthe transient performance in the deterministic system where thedisturbance is modeled by a step-wise increase of load, then ina stochastic system with the interpretation of the H2 norm asthe limit of the variance of the output.

5.1. In the deterministic system

We analyze the impact of the control gain coefficients onthe performance on the deterministic system where the distur-bances are step-wise increased power loads by 66 MW at nodes4, 12 and 20 at time ๐‘ก = 5 seconds. This step-wise disturbancelead the overall frequency to dominate the relative frequenciesas described in Remark 4.4, which illustrates the function of

Figure 1: IEEE 39-bus test power system

the secondary frequency control. The system behavior follow-ing the disturbance also show us how the convergence of thestate can be accelerated by tuning ๐‘˜1 and ๐‘˜3 monotonically. Wecalculate the following two metrics

๐‘† =

โˆซ ๐‘‡0

0๐Ž๐‘‡ (๐‘ก)๐Ž(๐‘ก)๐‘‘๐‘ก, and ๐ถ =

12

โˆซ ๐‘‡0

0๐’–๐‘‡ (๐‘ก)๐œถ๐’–(๐‘ก)๐‘‘๐‘ก,

to measure the performance of ๐Ž(๐‘ก) and ๐’–(๐‘ก) during the tran-sient phase, where ๐‘‡0 = 40, ๐Ž = col(๐œ”๐‘–) for ๐‘– โˆˆ V๐‘€ โˆช V๐น ,๐’– = col(๐‘ข๐‘–) for ๐‘– โˆˆ V๐‘€ โˆชV๐น and ๐œถ = diag(๐›ผ๐‘–).

From Fig.2 (๐‘Ž1-๐‘Ž2), it can be observed that the frequencyrestoration is accelerated by a larger ๐‘˜1 with an accelerated con-vergence of the control input as shown in Fig. 2 (๐‘1). FromFig.2 (๐‘2-๐‘3), it can be seen that the consensus of the marginalcosts is accelerated by a larger ๐‘˜3 with little influences on thefrequency deviation as shown in Fig.2 (๐‘Ž2-๐‘Ž3). It can be easilyimagined that the marginal costs converge to that of GBPIAC asshown in Fig. 2 (b4) as ๐‘˜3 further increases. Hence, by increas-ing ๐‘˜1 and ๐‘˜3, the convergence of the state of the closed-sytstemto the optimal state can be accelerated, and by increasing ๐‘˜3,the performance of the distributed control method DPIAC ap-proaches to that of the centralized control method GBPIAC.

Fig.2 (๐‘2 โˆ’ ๐‘3) show the trends of ๐‘† and ๐ถ with respect to๐‘˜1 and ๐‘˜3. It can be observed from Fig.2 (๐‘2) that as ๐‘˜1 in-creases, the frequency deviation decreases while the controlcost increases. Hence, to obtain a better performance of thefrequencies, a higher control cost is needed. In addition, ๐‘†converges to a non-zero value as ๐‘˜1 increases which is con-sistent with the anlsysis in (27). However, the control cost isbounded as ๐‘˜1 increases due to the bounded disturbance, whichis different from the conclusion from Theorem 4.6. When thedisturbance is unbounded, the control cost is also unbounded,which will be further discussed in the next subsection. FromFig.2 (๐‘3), it can seen that the control cost decreases inverselyto a non-zero value as ๐‘˜3 increases, which is also consistentwith the analysis in (29).

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Time (sec)

0 10 20 30 40

Fre

qu

en

cy

(H

z)

59.9

59.92

59.94

59.96

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60

60.02DPIAC(k1 = 0.4, k3 = 10): Frequency

Time (sec)

0 10 20 30 40

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qu

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Time (sec)

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60.02DPIAC(k1 = 0.8, k3 = 20): Frequency

Time (sec)

0 10 20 30 40

Fre

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en

cy

(H

z)

59.9

59.92

59.94

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60

60.02GBPIAC(k1 = 0.8): Frequency

Time (sec)

0 10 20 30 40

Ma

rgin

al

Co

st

0

5

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25DPIAC(k1 = 0.4, k3 = 10): Marginal Cost

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25DPIAC(k1 = 0.8, k3 = 20): Marginal Cost

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25GBPIAC(k1 = 0.4): Marginal Cost

Time (sec)

0 10 20 30 40

Po

wer

(M

W)

0

50

100

150

200

250DPIAC: Sum of inputs

k1 = 0.4, k3 = 10

k1 = 0.8, k3 = 10

k1 = 0.8, k3 = 20

Ps

Gain coefficient k1

0.2 0.4 0.6 0.8 1 1.2 1.4 1.6 1.8 2

Co

ntr

ol c

ost

ร—106

4.5

5

DPIAC(k3 = 10): C and S

Fre

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cy d

ev

iati

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0

1

2

C S

Gain coefficient k3

2 4 6 8 10 12 14 16 18 20

Co

ntr

ol c

ost

ร—106

4.5

5

DPIAC(k1 = 0.4): C and S

Fre

qu

en

cy d

ev

iati

on

0

1

2

CS

(a1) (a2) (a3) (a4)

(b1) (b2) (b3) (b4)

(c1) (c2) (c3)

Figure 2: The simulation result of the determistic system.

Time (sec)

0 10 20 30 40

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59.98

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60.01

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DPIAC (k1 = 1.6, k3 = 10): Frequency

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60.02

GBPIAC (k1 = 1.6): Frequency

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rgin

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-8

-4

0

4

8DPIAC(k1 = 0.4, k3 = 10): Marginal Cost

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0

4

8GBPIAC(k1 = 1.6): Marginal Cost

Time (sec)

0 10 20 30 40

Po

wer

(M

W)

-20

-10

0

10

20

DPIAC: Sum of inputs

k1 = 0.4, k3 = 10

k1 = 1.6, k3 = 10

k1 = 1.6, k3 = 20

Gain coefficient k1

0.4 0.8 1.2 1.6 2 2.4 2.8 3.2

Co

ntr

ol co

st

ร—105

0

1

2

3

4

DPIAC (k3 = 10): EC and ES

Fre

qu

en

cy d

evia

tio

n

ร—10-8

2.5

3.5

4.5

5.5EC ES

Gain coefficient k3

6 8 10 12 14 16 18 20 22 24 26 28 30

Co

ntr

ol co

st

ร—105

0

1

2

3

4

DPIAC (k1 = 2.4): EC and ES

Fre

qu

en

cy d

evia

tio

n

ร—10-8

2.5

3.5

4.5

5.5ECES

(a1) (a2) (a3) (a4)

(b1) (b2) (b3) (b4)

(c1) (c2) (c3)

Figure 3: The simulation result of the stochastic system.

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5.2. In the stochastic system

With the interpretation of the H2 norm where the distur-bances are modelled by white noise, we assume the distur-bances are from the nodes of loads and ๐‘ค๐‘– โˆผ ๐‘ (0, ๐œŽ2

๐‘–) with

๐œŽ๐‘– = 0.002 for ๐‘– โˆˆ V๐‘ƒ . With these noise signal, the distur-bances are unbounded and the closed-loop system becomes astochastic algebraic differential system. We refer to [30] for anumerical algorithm to solve this stochastic system.

It can be observed from Fig. 3 (๐‘Ž1-๐‘Ž2) that the variance ofthe frequency deviation can be suppressed with a large ๐‘˜1 whichhowever increases the variances of the marginal costs and thetotal control cost as shown in Fig. 3 (๐‘2) and (๐‘1) respectively.These observations are consistent with the analysis of Theo-rem 4.6 when ๐‘˜3 is fixed. From Fig. 3 (๐‘Ž2-๐‘Ž3), it can be seenthat increasing ๐‘˜3 can effectively suppress the variances of themarginal costs.

We calculate the following metrics to study the impact of๐‘˜1 and ๐‘˜3 on the variance of the frequency deviation and theexpected control cost,

๐ธ๐‘† = ๐ธ [๐Ž๐‘‡ (๐‘ก)๐Ž(๐‘ก)], and ๐ธ๐ถ =12๐ธ [๐’–๐‘‡ (๐‘ก)๐œถ๐’–(๐‘ก)] .

Fig.3 (๐‘2-๐‘3) show the trend of ๐ธ๐‘† and ๐ธ๐ถ as ๐‘˜1 and ๐‘˜3 in-crease. Similar to the discussion in the previous subsection,a trade-off can be found between the frequency deviation andthe control cost in Fig.3 (๐‘2). The difference is that the controlcost increases linearly as ๐‘˜1 increases unboundly because ofthe unbounded disturbances. This is consistent with the resultin Theorem 4.6, which further confirms that a better frequencyresponse requires a higher control cost.

Fig. 3 (๐‘3) illustrates the trend of the expected control costand the variance of the frequency deviations with respect to ๐‘˜3.It can be observed that the expected control cost decreases as ๐‘˜3increases, which is consistent as in (29). However, the varianceof the frequency deviation is slightly increased, which is alsoconsistent with our analysis in (27).

6. Conclusion

For the power system controlled by DPIAC, it has beendemonstrated analytically and numerically that the transientperformance of the frequency can be improved by tuning thecoefficients monotonically, and a trade-off between the controlcost and frequency deviations has to be resolved to obtain a de-sired frequency response with acceptable control cost.

There usually are noises and delays in the state measurementand communications in practice, which are neglected in this pa-per. How these factors influence the transient behaviors of thestate requires further investigation.

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