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Quantitative Analysis of the Impact of Power Market and Policy on Renewable Energy Utilization EI Scopus
会议论文 | 2022 , 976-981 | 5th International Conference on Energy, Electrical and Power Engineering, CEEPE 2022
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Abstract :

Promoting the construction of the power market and the implementation of renewable energy policies to facilitate the use of renewable energy has become the industry consensus. In recent years, the renewable energy installed capacity in China has exploded, the varieties of market-oriented transactions for renewable energy have been continuously enriched, and the renewable energy policies also have been improved. However, the lack of quantitative analysis synthetically considering the impact of market, policy, and physical boundary on renewable energy utilization makes it difficult to measure and compare the effect of power market and policies. To solve this problem, this paper constructs a quantitative analysis model for renewable energy utilization and analyzes the influence mechanism of the market, policy, and physical boundary on renewable energy utilization to minimize system operating costs. The validity of the proposed model is verified by numerical results. © 2022 IEEE.

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GB/T 7714 Xu, Liang , Dong, Xiaoliang , Qiao, Ning et al. Quantitative Analysis of the Impact of Power Market and Policy on Renewable Energy Utilization [C] . 2022 : 976-981 .
MLA Xu, Liang et al. "Quantitative Analysis of the Impact of Power Market and Policy on Renewable Energy Utilization" . (2022) : 976-981 .
APA Xu, Liang , Dong, Xiaoliang , Qiao, Ning , Zhang, Chao , Sun, Yuge , Ding, Tao . Quantitative Analysis of the Impact of Power Market and Policy on Renewable Energy Utilization . (2022) : 976-981 .
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Power System Frequency Regulation Model Based on Blockchain Community Thinking EI Scopus
期刊论文 | 2022 , 42 (4) , 1375-1387 | Proceedings of the Chinese Society of Electrical Engineering
SCOPUS Cited Count: 1
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Abstract :

Frequency regulation (FR) plays an important role in maintaining the power balance and stability of power systems. How to fairly and reasonably compensate generators and actively stimulate generators in the frequency regulation ancillary service market is an urgent problem to be solved by power market reforms. In this paper, a blockchain community thinking with decentralization, multi-party consensus and token incentive was proposed. Based on the token incentive feature, an FR credit was designed to integrate the global FR effect and individual participation performance, and then a frequency response model of the distributed FR system with decentralized features was established. Furthermore, the settlement process of the FR credit was designed by using multiparty consensus thinking, which can motivate generators to participate in FR and ensure the authenticity and reliability of the results. Case study verifies the effectiveness of the distributed FR system, which can effectively complete the system FR tasks and credit settlements, and fully mobilize the FR generators to enhance the efficiency of distributed FR resources. © 2022 Chin. Soc. for Elec. Eng.

Keyword :

Blockchain Commerce Frequency response

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GB/T 7714 Mu, Chenggang , Ding, Tao , Ju, Chang et al. Power System Frequency Regulation Model Based on Blockchain Community Thinking [J]. | Proceedings of the Chinese Society of Electrical Engineering , 2022 , 42 (4) : 1375-1387 .
MLA Mu, Chenggang et al. "Power System Frequency Regulation Model Based on Blockchain Community Thinking" . | Proceedings of the Chinese Society of Electrical Engineering 42 . 4 (2022) : 1375-1387 .
APA Mu, Chenggang , Ding, Tao , Ju, Chang , Li, Li , Chi, Fangde , He, Yuankang et al. Power System Frequency Regulation Model Based on Blockchain Community Thinking . | Proceedings of the Chinese Society of Electrical Engineering , 2022 , 42 (4) , 1375-1387 .
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Admissible Region of Renewable Generation Ensuring Power Flow Solvability in Distribution Networks EI SCIE Scopus
期刊论文 | 2022 , 16 (3) , 3982-3992 | IEEE SYSTEMS JOURNAL
SCOPUS Cited Count: 4
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Abstract :

The uncertainty of renewable generation makes the operating status of distribution systems more volatile, as fully controllable resource at the distribution level is rare. A dispatchable region refers to the set that consists of all admissible patterns of nodal renewable power injections under which the power flow is solvable without violating security bound constraints. This article studies the dispatchable region in distribution networks under alternating current power flow model. A rank minimization problem is proposed to test power flow solvability under a fixed nodal power injection pattern, providing basic operation to construct the exact dispatchable region. A sequential low-order semidefinite programming procedure is developed to solve the problem. Furthermore, based on a global outer approximation of the second-order conic relaxation of the distflow model, a linear programming-based polyhedral projection algorithm is developed to calculate an outer approximation of the dispatchable region. The projection algorithm is also applied to the traditional linearized distflow model. Combining the feasibility test procedure, it is shown that the intersection of the respective dispatchable regions obtained from two linearized power flow models produces a fairly accurate approximation for the true dispatchable region under the exact nonlinear distflow model. The proposed method is an extension of existing studies on security assessment for distribution systems under uncertainty.

Keyword :

Dispatchable region distflow model Distribution networks distribution system Load modeling Mathematical models Renewable energy sources renewable generation security assessment Uncertainty Visualization Voltage

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GB/T 7714 Shen, Ziqi , Wei, Wei , Ding, Tao et al. Admissible Region of Renewable Generation Ensuring Power Flow Solvability in Distribution Networks [J]. | IEEE SYSTEMS JOURNAL , 2022 , 16 (3) : 3982-3992 .
MLA Shen, Ziqi et al. "Admissible Region of Renewable Generation Ensuring Power Flow Solvability in Distribution Networks" . | IEEE SYSTEMS JOURNAL 16 . 3 (2022) : 3982-3992 .
APA Shen, Ziqi , Wei, Wei , Ding, Tao , Li, Zhigang , Mei, Shengwei . Admissible Region of Renewable Generation Ensuring Power Flow Solvability in Distribution Networks . | IEEE SYSTEMS JOURNAL , 2022 , 16 (3) , 3982-3992 .
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Short-term Solar Power Prediction Learning Directly from Satellite Images With Regions of Interest EI SCIE Scopus
期刊论文 | 2022 , 13 (1) , 629-639 | IEEE TRANSACTIONS ON SUSTAINABLE ENERGY
WoS CC Cited Count: 6 SCOPUS Cited Count: 41
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Abstract :

Developing solar power generation technology is an efficient approach to relieving the global environmental crisis. However, solar energy is an energy source with strong uncertainty, which restricts large-scale photovoltaic (PV) applications until accurate solar energy predictions can be achieved. PV power forecasting methods have been widely researched based on existing predictions of satellite-derived solar irradiance, whereas modeling cloud motion directly from satellite images is still a tough task. In this study, an end-to-end short-term forecasting model is proposed to take satellite images as inputs, and it can learn the cloud motion characteristics from stacked optical flow maps. In order to reduce the huge size of measurements, static regions of interest (ROIs) are scoped based on historical cloud velocities. With its well-designed deep learning architecture, the proposed model can output multi-step-ahead prediction results sequentially by shifting receptive attention to dynamic ROIs. According to comparisons with related studies, the proposed model outperforms persistence and derived methods, and enhances its learning capability relative to conventional learning models via the novel architecture. The model can be applied to PV plants or arrays in different areas, suitable for forecast horizons within three hours.

Keyword :

Cloud motion Clouds Computational modeling Data models deep learning Forecasting photovoltaic forecasting Predictive models regions of interest satellite images Satellites Weather forecasting

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GB/T 7714 Cheng, Lilin , Zang, Haixiang , Wei, Zhinong et al. Short-term Solar Power Prediction Learning Directly from Satellite Images With Regions of Interest [J]. | IEEE TRANSACTIONS ON SUSTAINABLE ENERGY , 2022 , 13 (1) : 629-639 .
MLA Cheng, Lilin et al. "Short-term Solar Power Prediction Learning Directly from Satellite Images With Regions of Interest" . | IEEE TRANSACTIONS ON SUSTAINABLE ENERGY 13 . 1 (2022) : 629-639 .
APA Cheng, Lilin , Zang, Haixiang , Wei, Zhinong , Ding, Tao , Xu, Ruiqi , Sun, Guoqiang . Short-term Solar Power Prediction Learning Directly from Satellite Images With Regions of Interest . | IEEE TRANSACTIONS ON SUSTAINABLE ENERGY , 2022 , 13 (1) , 629-639 .
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Hybrid Swapped Battery Charging and Logistics Dispatch Model in Continuous Time Domain EI SCIE Scopus
期刊论文 | 2022 , 71 (3) , 2448-2458 | IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY
SCOPUS Cited Count: 14
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Abstract :

Electric vehicles (EVs) have attracted enormous attention in recent years due to their potentials in mitigating energy crisis and air pollutions. However, the long battery charging time and lack of sufficient charging infrastructure highly restrict the popularization of EVs. In this context, it is promising to establish battery charging and swapping systems (BCSSs) based on the concept of battery swapping services. To optimally achieve the combined operation of BCSSs, this paper proposes a hybrid swapped battery charging and logistics dispatch model in continuous time domain. Identifying the special structure of the mathematical models of the two problems, this paper innovatively formulated the swapped battery charging strategy as the rectangle packing problem and the battery logistics model as the vehicle routing problem. The two models are closely linked by the delivery time of transporting the well-charged batteries from battery charging stations to battery swapping stations. A hybrid optimal operation model of BCSSs is further formulated as a mixed-integer linear programming model by incorporating the interaction between the battery charging and battery logistics. Finally, case studies are conducted on several BCSSs and numerical results validate the effectiveness of the proposed model.

Keyword :

Batteries Costs Electric vehicles Load modeling Logistics logistics dispatch Mathematical models Numerical models Optimization rectangle packing problem swapped battery charging

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GB/T 7714 Jia, Wenhao , Ding, Tao , Bai, Jiawen et al. Hybrid Swapped Battery Charging and Logistics Dispatch Model in Continuous Time Domain [J]. | IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY , 2022 , 71 (3) : 2448-2458 .
MLA Jia, Wenhao et al. "Hybrid Swapped Battery Charging and Logistics Dispatch Model in Continuous Time Domain" . | IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY 71 . 3 (2022) : 2448-2458 .
APA Jia, Wenhao , Ding, Tao , Bai, Jiawen , Bai, Linquan , Yang, Yongheng , Blaabjerg, Frede . Hybrid Swapped Battery Charging and Logistics Dispatch Model in Continuous Time Domain . | IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY , 2022 , 71 (3) , 2448-2458 .
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A Two-Layer Model for Microgrid Real-Time Scheduling Using Approximate Future Cost Function EI SCIE Scopus
期刊论文 | 2022 , 37 (2) , 1264-1273 | IEEE TRANSACTIONS ON POWER SYSTEMS
WoS CC Cited Count: 3 SCOPUS Cited Count: 15
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Abstract :

Microgrids incorporate an increasing number of distributed energy resources (DERs), which induce a higher variability and faster dispatch capabilities in power systems. This paper proposes a two-layer real-time scheduling model for microgrids, based on approximate future cost function (AFCF), where the future cost represents the opportunity cost for the microgrid operation in subsequent periods. At the upper layer, the look-ahead rolling scheduling is adopted to optimize microgrid operations, in which the future cost function (FCF) in deterministic and stochastic scenarios is approximated by a piecewise linear function. At the lower layer, a real-time parameter updating strategy based on real-time data is proposed. In this case, the real-time scheduling readjusts the look-ahead schedule using the immediate cost in the current period and the future cost calculated by the updated AFCF. The proposed two-layer real-time scheduling model uses an offline optimization, in which most of the computation tasks are completed at the upper layer, and applies a real-time optimization, in which the time-consuming problem is avoided at the lower layer. The effectiveness of the proposed two-layer real-time scheduling model of microgrids is validated by using a grid-connected microgrid system. For comparison, other existing real-time scheduling methods are also implemented in the same microgrid system.

Keyword :

Cost function Dynamic scheduling future cost function Load modeling Microgrid Microgrids Processor scheduling real-time scheduling Real-time systems State of charge two-layer scheduling

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GB/T 7714 Liu, Chunyang , Zhang, Hengxu , Shahidehpour, Mohammad et al. A Two-Layer Model for Microgrid Real-Time Scheduling Using Approximate Future Cost Function [J]. | IEEE TRANSACTIONS ON POWER SYSTEMS , 2022 , 37 (2) : 1264-1273 .
MLA Liu, Chunyang et al. "A Two-Layer Model for Microgrid Real-Time Scheduling Using Approximate Future Cost Function" . | IEEE TRANSACTIONS ON POWER SYSTEMS 37 . 2 (2022) : 1264-1273 .
APA Liu, Chunyang , Zhang, Hengxu , Shahidehpour, Mohammad , Zhou, Quan , Ding, Tao . A Two-Layer Model for Microgrid Real-Time Scheduling Using Approximate Future Cost Function . | IEEE TRANSACTIONS ON POWER SYSTEMS , 2022 , 37 (2) , 1264-1273 .
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Pathways of clean energy heating electrification programs for reducing carbon emissions in Northwest China EI SCIE Scopus
期刊论文 | 2022 , 166 | Renewable and Sustainable Energy Reviews
SCOPUS Cited Count: 8
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Abstract :

Clean energy heating electrification programs provide a promising way to reduce carbon emissions from fossil fuel combustion and consumption. This work studies the cost competitiveness of clean energy heating technologies under three dynamic mechanisms: investment costs, subsidy policies, and operating costs with real data. It provides key insights into the cost competitiveness of the different heating technologies deployed in different areas, as well as their sensitivity to the three dynamic mechanisms. The results show that currently, the distinct heating programs are more cost-efficient in the urban area with existing heating networks. The average payback period of all district clean energy heating programs in the urban area is 14.9 years, while that of the individual clean heating programs is 24.7 years. The individual heating programs are becoming increasingly cost-competitive with the incentive mechanisms, especially the electricity pricing mechanisms. Moreover, individual heating technologies present remarkable advantages on flexibility and sustainability in the long run. According to the technology diffusion model proposed in this paper, the individual clean heating programs will occupy more than 50% of the market share in 2050 under the comprehensive effect of CAPEX, government subsidies, and OPEX. The real-world results and analysis render references to shape the pathway of clean energy heating electrification in Northwest China and other regions with a similar situation. © 2022 Elsevier Ltd

Keyword :

Carbon Competition Cost benefit analysis Dynamics Electric utilities Fossil fuels Investments Operating costs Sustainable development

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GB/T 7714 Ding, Tao , Sun, Yuge , Huang, Can et al. Pathways of clean energy heating electrification programs for reducing carbon emissions in Northwest China [J]. | Renewable and Sustainable Energy Reviews , 2022 , 166 .
MLA Ding, Tao et al. "Pathways of clean energy heating electrification programs for reducing carbon emissions in Northwest China" . | Renewable and Sustainable Energy Reviews 166 (2022) .
APA Ding, Tao , Sun, Yuge , Huang, Can , Mu, Chenlu , Fan, Yuqi , Lin, Jiang et al. Pathways of clean energy heating electrification programs for reducing carbon emissions in Northwest China . | Renewable and Sustainable Energy Reviews , 2022 , 166 .
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Solar Power Prediction Based on Satellite Measurements - A Graphical Learning Method for Tracking Cloud Motion EI SCIE Scopus
期刊论文 | 2022 , 37 (3) , 2335-2345 | IEEE TRANSACTIONS ON POWER SYSTEMS
SCOPUS Cited Count: 24
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Abstract :

The stochastic cloud cover on photovoltaic (PV) panels affects the solar power outputs, producing high instability in the integrated power systems. It is an effective approach to track the cloud motion during short-term PV power forecasting based on data sources of satellite images. However, since temporal variations of these images are noisy and non-stationary, pixel-sensitive prediction methods are critically needed in order to seek a balance between the forecast precision and the huge computation burden due to a large image size. Hence, a graphical learning framework is proposed in this study for intra-hour PV power prediction. By simulating the cloud motion using bi-directional extrapolation, a directed graph is generated representing the pixel values from multiple frames of historical images. The nodes and edges in the graph denote the shapes and motion directions of the regions of interest (ROIs) in satellite images. A spatial-temporal graph neural network (GNN) is then proposed to deal with the graph. Comparing with conventional deep-learning-based models, GNN is more flexible for varying sizes of input, in order to be able to handle dynamic ROIs. Referring to the comparative studies, the proposed method greatly reduces the redundancy of image inputs without sacrificing the visual scope, and slightly improves the prediction accuracy.

Keyword :

Bidirectional control Brightness temperature Clouds deep learning Extrapolation Forecasting graphical learning Predictive models satellite images Satellites Solar PV power prediction

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GB/T 7714 Cheng, Lilin , Zang, Haixiang , Wei, Zhinong et al. Solar Power Prediction Based on Satellite Measurements - A Graphical Learning Method for Tracking Cloud Motion [J]. | IEEE TRANSACTIONS ON POWER SYSTEMS , 2022 , 37 (3) : 2335-2345 .
MLA Cheng, Lilin et al. "Solar Power Prediction Based on Satellite Measurements - A Graphical Learning Method for Tracking Cloud Motion" . | IEEE TRANSACTIONS ON POWER SYSTEMS 37 . 3 (2022) : 2335-2345 .
APA Cheng, Lilin , Zang, Haixiang , Wei, Zhinong , Ding, Tao , Sun, Guoqiang . Solar Power Prediction Based on Satellite Measurements - A Graphical Learning Method for Tracking Cloud Motion . | IEEE TRANSACTIONS ON POWER SYSTEMS , 2022 , 37 (3) , 2335-2345 .
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Online Rectangle Packing Algorithm for Swapped Battery Charging Dispatch Model Considering Continuous Charging Power SCIE Scopus
期刊论文 | 2022 | IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING
SCOPUS Cited Count: 2
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Abstract :

The vigorous development of electric vehicles (EVs) is an important means of reducing carbon emissions and mitigating environmental problems such as the greenhouse effect. Battery swapping stations (BSSs) can both provide battery swapping services for large-scale EVs and charge batteries centrally. As the supply of fully charged batteries in the BSS shrinks, it becomes necessary to schedule the charging of the depleted batteries rapidly that users have swapped for fully-charged ones. The charging schedule for depleted batteries must be made without knowledge of future battery arrivals. In this context, this paper develops a mathematical model for online charging scheduling of BSSs, formulates the charging strategy as a two-dimensional rectangle packing problem, and quickly calculates the scheduling arrangement of batteries by partitioning the remaining available capacity of a BSS. Since there are limited battery types within the BSS which can provide battery replacement services, this paper supplements the proposed model with known battery types, which improves the utilization of the available capacity of BSSs. Finally, numerical results verify the effectiveness of the proposed model. Note to Practitioners-Electric vehicles (EVs) are becoming an alternative way to reduce carbon emissions in transportation systems. Herein, the optimal battery charging problem is the core problem when it comes to dispatching a huge number of EVs. Up to now, battery-swapping is widely used for EVs due to its simple, convenient way. Furthermore, a business model for the battery swapping stations (BSSs) is brought up, where EV users send their depleted batteries to the BSS and the BSS provides the users with a fully charged replacement battery from its warehouse, which only takes a few minutes. Since the maximum charging power of the BSS is limited by the capacity of the transformer connecting the BSS to the power grid, the BSS will adopt an optimal charging schedule that maximizes the charging benefit for large quantities of depleted batteries in the warehouse. However, the challenge is that the charging schedule for depleted batteries must be made without knowledge of future battery arrivals because the EV behaviors are difficult to predict. To address this problem, this paper developed an online charging scheduling algorithm, which formulates the charging strategy as a two-dimensional rectangle packing problem. The proposed method can provide battery replacement services in real-time and solve quickly without any information about incoming depleted EV batteries. The proposed model and method have been tested on the system with different numbers of batteries to show the effectiveness. Besides, the online two-dimensional rectangle packing problem can provide an online decision for BSSs.

Keyword :

battery swapping station Electric vehicles online algorithm rectangle packing problem uninterrupted discrete-rate charging

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GB/T 7714 Bai, Jiawen , Ding, Tao , Jia, Wenhao et al. Online Rectangle Packing Algorithm for Swapped Battery Charging Dispatch Model Considering Continuous Charging Power [J]. | IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING , 2022 .
MLA Bai, Jiawen et al. "Online Rectangle Packing Algorithm for Swapped Battery Charging Dispatch Model Considering Continuous Charging Power" . | IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING (2022) .
APA Bai, Jiawen , Ding, Tao , Jia, Wenhao , Zhu, Shanying , Bai, Linquan , Li, Fangxing . Online Rectangle Packing Algorithm for Swapped Battery Charging Dispatch Model Considering Continuous Charging Power . | IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING , 2022 .
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On Resilience and Distributed Fixed-Time Control of MTDC Systems Under DoS Attacks SCIE Scopus
期刊论文 | 2022 | IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING
SCOPUS Cited Count: 5
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This article investigates the resiliently distributed fixed-time control of frequency recovery and power allocation in a multi-terminal high voltage direct current (MTDC) system against denial-of-service (DoS) attacks. An MTDC system typically consists of several AC areas, on which the DoS attacks may cause communication faults by blocking communication channels, preventing certain AC areas from sending message and damaging related facilities. A novel distributed security control scheme is proposed in this paper, which introduces attack detection method and communication repair mechanism to restore the paralyzed topology caused by DoS attacks. By extension, a resiliently distributed fixed-time control is presented under this frame. The proposed control scheme can not only realize frequency restoration but also accomplish active power sharing under DoS attacks. Furthermore, different from existing control strategies, the advanced scheme can guarantee the convergence time without considering the initial value, which helps improve the robustness and stability of the MTDC system. The resilient stability of the proposed scheme is proved by Lyapunov-Krasovskii stability theory. Finally, case studies on an MTDC system are conducted to demonstrate the effectiveness and validity of the proposed controller. Note to Practitioners-MTDC system is a large-scale power system connecting various AC grids. It has the characteristics of distributed and high intelligence, which is prone to be attacked by an adversary. As an index to measure the safe and stable operation of MTDC system, frequency is the focus of this paper. We propose a novel topology recovery mechanism for MTDC systems under DoS attack and design a resilient fixed-time secondary frequency controller based on the idea of multi-agent. The experimental results show that under DOS attack, the proposed topology recovery mechanism and controller can recover the frequency to the rated value in a fixed time and realize the proportional distribution of active power. In practical application, engineers can learn from the controller to resist DoS attack and realize the stable operation of large-scale distributed power system.

Keyword :

Denial-of-service attack distributed fixed-time control DoS attacks Frequency control Frequency modulation MTDC system Power system stability resilience Time-frequency analysis Topology Voltage control

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GB/T 7714 Zhang, Xiaoyue , Liu, Xinghua , Ding, Tao et al. On Resilience and Distributed Fixed-Time Control of MTDC Systems Under DoS Attacks [J]. | IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING , 2022 .
MLA Zhang, Xiaoyue et al. "On Resilience and Distributed Fixed-Time Control of MTDC Systems Under DoS Attacks" . | IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING (2022) .
APA Zhang, Xiaoyue , Liu, Xinghua , Ding, Tao , Wang, Peng . On Resilience and Distributed Fixed-Time Control of MTDC Systems Under DoS Attacks . | IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING , 2022 .
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