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Economic Power Dispatching from Distributed Generations: Review of Optimization Techniques
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作者 Paramjeet Kaur Krishna Teerth Chaturvedi Mohan Lal Kolhe 《Energy Engineering》 EI 2024年第3期557-579,共23页
In the increasingly decentralized energy environment,economical power dispatching from distributed generations(DGs)is crucial to minimizing operating costs,optimizing resource utilization,and guaranteeing a consistent... In the increasingly decentralized energy environment,economical power dispatching from distributed generations(DGs)is crucial to minimizing operating costs,optimizing resource utilization,and guaranteeing a consistent and sustainable supply of electricity.A comprehensive review of optimization techniques for economic power dispatching from distributed generations is imperative to identify the most effective strategies for minimizing operational costs while maintaining grid stability and sustainability.The choice of optimization technique for economic power dispatching from DGs depends on a number of factors,such as the size and complexity of the power system,the availability of computational resources,and the specific requirements of the application.Optimization techniques for economic power dispatching from distributed generations(DGs)can be classified into two main categories:(i)Classical optimization techniques,(ii)Heuristic optimization techniques.In classical optimization techniques,the linear programming(LP)model is one of the most popular optimization methods.Utilizing the LP model,power demand and network constraints are met while minimizing the overall cost of generating electricity from DGs.This approach is efficient in determining the best DGs dispatch and is capable of handling challenging optimization issues in the large-scale system including renewables.The quadratic programming(QP)model,a classical optimization technique,is a further popular optimization method,to consider non-linearity.The QP model can take into account the quadratic cost of energy production,with consideration constraints like network capacity,voltage,and frequency.The metaheuristic optimization techniques are also used for economic power dispatching from DGs,which include genetic algorithms(GA),particle swarm optimization(PSO),and ant colony optimization(ACO).Also,Some researchers are developing hybrid optimization techniques that combine elements of classical and heuristic optimization techniques with the incorporation of droop control,predictive control,and fuzzy-based methods.These methods can deal with large-scale systems with many objectives and non-linear,non-convex optimization issues.The most popular approaches are the LP and QP models,while more difficult problems are handled using metaheuristic optimization techniques.In summary,in order to increase efficiency,reduce costs,and ensure a consistent supply of electricity,optimization techniques are essential tools used in economic power dispatching from DGs. 展开更多
关键词 Economic power dispatching distributed generations decentralized energy cost minimization optimization techniques
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Mechanical Dispatch Reliability Prediction for Civil Aircraft Considering Operational Parameters 被引量:1
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作者 Yunwen Feng Zhicen Song Cheng Lu 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第3期1925-1942,共18页
To effectively predict the mechanical dispatch reliability(MDR),the artificial neural networks method combined with aircraft operation health status parameters is proposed,which introduces the real civil aircraft oper... To effectively predict the mechanical dispatch reliability(MDR),the artificial neural networks method combined with aircraft operation health status parameters is proposed,which introduces the real civil aircraft operation data for verification,to improve the modeling precision and computing efficiency.Grey relational analysis can identify the degree of correlation between aircraft system health status(such as the unscheduled maintenance event,unit report event,and services number)and dispatch release and screen out themost closely related systems to determine the set of input parameters required for the prediction model.The artificial neural network using radial basis function(RBF)as a kernel function,has the best applicability in the prediction of multidimensional,small sample problems.Health status parameters of related systems are used as the input to predict the changing trend ofMDR,under the artificial neural network modeling framework.The case study collects real operation data for a certain civil aircraft over the past five years to validate the performance of the model which meets the requirements of the application.The results show that the prediction quadratic error Ep of the model reaches 6.9×10−8.That is to say,in the existing operating environment,the prediction of the number of delay&cancel events per month can be less than once.The accuracy of RBF ANN,BP ANN and GA-BP ANN are compared further,and the results show that RBF ANN has better adaptability to such multidimensional small sample problems.The efforts of this paper provide a highly efficientmethod for theMDR prediction through aircraft system health state parameters,which is a promising model to enhance the prediction and controllability of the dispatch release,providing support for the construction of the civil aircraft operation system. 展开更多
关键词 Mechanical dispatch reliability GRA-RBF civil aircraft artificial neural network
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Physics-Informed AI Surrogates for Day-Ahead Wind Power Probabilistic Forecasting with Incomplete Data for Smart Grid in Smart Cities 被引量:1
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作者 Zeyu Wu Bo Sun +2 位作者 Qiang Feng Zili Wang Junlin Pan 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第10期527-554,共28页
Due to the high inherent uncertainty of renewable energy,probabilistic day-ahead wind power forecasting is crucial for modeling and controlling the uncertainty of renewable energy smart grids in smart cities.However,t... Due to the high inherent uncertainty of renewable energy,probabilistic day-ahead wind power forecasting is crucial for modeling and controlling the uncertainty of renewable energy smart grids in smart cities.However,the accuracy and reliability of high-resolution day-ahead wind power forecasting are constrained by unreliable local weather prediction and incomplete power generation data.This article proposes a physics-informed artificial intelligence(AI)surrogates method to augment the incomplete dataset and quantify its uncertainty to improve wind power forecasting performance.The incomplete dataset,built with numerical weather prediction data,historical wind power generation,and weather factors data,is augmented based on generative adversarial networks.After augmentation,the enriched data is then fed into a multiple AI surrogates model constructed by two extreme learning machine networks to train the forecasting model for wind power.Therefore,the forecasting models’accuracy and generalization ability are improved by mining the implicit physics information from the incomplete dataset.An incomplete dataset gathered from a wind farm in North China,containing only 15 days of weather and wind power generation data withmissing points caused by occasional shutdowns,is utilized to verify the proposed method’s performance.Compared with other probabilistic forecastingmethods,the proposed method shows better accuracy and probabilistic performance on the same incomplete dataset,which highlights its potential for more flexible and sensitive maintenance of smart grids in smart cities. 展开更多
关键词 Physics-informed method probabilistic forecasting wind power generative adversarial network extreme learning machine day-ahead forecasting incomplete data smart grids
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Wind farm active power dispatching algorithm based on Grey Incidence
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作者 Binbin Zhang Mengxin Jia +2 位作者 Chaobo Chen Kun Wang Jichao Li 《Global Energy Interconnection》 EI CAS CSCD 2023年第2期175-183,共9页
This study proposes a wind farm active power dispatching(WFAPD) algorithm based on the grey incidence method, which does not rely on an accurate mathematical model of wind turbines. Based on the wind turbine start-sto... This study proposes a wind farm active power dispatching(WFAPD) algorithm based on the grey incidence method, which does not rely on an accurate mathematical model of wind turbines. Based on the wind turbine start-stop data at different wind speeds, the weighting coefficients, which are the participation degrees of a variable speed system and a variable pitch system in power regulation, are obtained using the grey incidence method. The incidence coefficient curve is fitted by the B-spline function at a full range of wind speeds, and the power regulation capacity of all wind turbines is obtained. Finally, the WFAPD algorithm, which is based on the regulating capacity of each wind turbine, is compared with the wind speed weighting power dispatching(WSWPD) algorithm in MATLAB. The simulation results show that the active power fluctuation of the wind farm is smaller, the rotating speed of wind turbines is smoother, and the fatigue load of highspeed turbines is effectively reduced. 展开更多
关键词 Wind farm Active power dispatching Grey incidence B-spline function
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Optimal dispatch approach for rural multi-energy supply systems considering virtual energy storage
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作者 Yanze Xu Yunfei Mu +3 位作者 Haijie Qi Hairun Li Peng Yu Shumin Sun 《Global Energy Interconnection》 EI CSCD 2023年第6期675-688,共14页
In response to the underutilization of energy and insufficient flexible operation capability of rural energy supply systems in China,this study proposes an optimal dispatch approach for a rural multi-energy supply sys... In response to the underutilization of energy and insufficient flexible operation capability of rural energy supply systems in China,this study proposes an optimal dispatch approach for a rural multi-energy supply system(RMESS)considering virtual energy storage(VES).First,to enable the flexible utilization of rural biomass resources and the thermal inertia of residential building envelopes,this study constructed VES-I and VES-II models that describe electrical-thermal and electrical-gas coupling from an electrical viewpoint.Subsequently,an RMESS model encompassing these two types of VES was formulated.This model delineates the intricate interplay of multi-energy components within the RMESS framework and facilitates the precise assessment of the adjustable potential for optimizing RMESS operations.Based on the above models,a day-ahead optimal dispatch model for an RMESS considering a VES is proposed to achieve optimal economic performance while ensuring efficient energy allocation.Comparative simulations validated the effectiveness of the VES modeling and the day-ahead optimal dispatch approach for the RMESS. 展开更多
关键词 Virtual energy storage Rural multi-energy supply system Multi-energy coupling Optimal dispatch
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Construction and application of knowledge graph for grid dispatch fault handling based on pre-trained model
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作者 Zhixiang Ji Xiaohui Wang +1 位作者 Jie Zhang Di Wu 《Global Energy Interconnection》 EI CSCD 2023年第4期493-504,共12页
With the construction of new power systems,the power grid has become extremely large,with an increasing proportion of new energy and AC/DC hybrid connections.The dynamic characteristics and fault patterns of the power... With the construction of new power systems,the power grid has become extremely large,with an increasing proportion of new energy and AC/DC hybrid connections.The dynamic characteristics and fault patterns of the power grid are complex;additionally,power grid control is difficult,operation risks are high,and the task of fault handling is arduous.Traditional power-grid fault handling relies primarily on human experience.The difference in and lack of knowledge reserve of control personnel restrict the accuracy and timeliness of fault handling.Therefore,this mode of operation is no longer suitable for the requirements of new systems.Based on the multi-source heterogeneous data of power grid dispatch,this paper proposes a joint entity–relationship extraction method for power-grid dispatch fault processing based on a pre-trained model,constructs a knowledge graph of power-grid dispatch fault processing and designs,and develops a fault-processing auxiliary decision-making system based on the knowledge graph.It was applied to study a provincial dispatch control center,and it effectively improved the accident processing ability and intelligent level of accident management and control of the power grid. 展开更多
关键词 Power-grid dispatch fault handling Knowledge graph Pre-trained model Auxiliary decision-making
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Finite-time economic model predictive control for optimal load dispatch and frequency regulation in interconnected power systems
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作者 Yubin Jia Tengjun Zuo +3 位作者 Yaran Li Wenjun Bi Lei Xue Chaojie Li 《Global Energy Interconnection》 EI CSCD 2023年第3期355-362,共8页
This paper presents a finite-time economic model predictive control(MPC)algorithm that can be used for frequency regulation and optimal load dispatch in multi-area power systems.Economic MPC can be used in a power sys... This paper presents a finite-time economic model predictive control(MPC)algorithm that can be used for frequency regulation and optimal load dispatch in multi-area power systems.Economic MPC can be used in a power system to ensure frequency stability,real-time economic optimization,control of the system and optimal load dispatch from it.A generalized terminal penalty term was used,and the finite-time convergence of the system was guaranteed.The effectiveness of the proposed model predictive control algorithm was verified by simulating a power system,which had two areas connected by an AC tie line.The simulation results demonstrated the effectiveness of the algorithm. 展开更多
关键词 Economic model predictive control Finite-time convergence Optimal load dispatch Frequency stability
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Combined Economic and Emission Power Dispatch Control Using Substantial Augmented Transformative Algorithm
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作者 T.R.Manikandan Venkatesan Thangavelu 《Intelligent Automation & Soft Computing》 SCIE 2023年第1期431-447,共17页
The purpose of the Combined Economic Emission Dispatch(CEED)of electric power is to offer the most exceptional schedule for production units,which must run with both low fuel costs and emission levels concurrently,the... The purpose of the Combined Economic Emission Dispatch(CEED)of electric power is to offer the most exceptional schedule for production units,which must run with both low fuel costs and emission levels concurrently,thereby meeting the lack of system equality and inequality constraints.Economic and emissions dispatching has become a primary and significant concern in power system networks.Consequences of using non-renewable fuels as input to exhaust power systems with toxic gas emissions and depleted resources for future generations.The optimal power allocation to generators serves as a solution to this problem.Emission dispatch reduces emissions while ignoring economic considerations.A collective strategy known as Combined Economic and Emission Dispatch is utilized to resolve the above-mentioned problems and investigate the trade-off relationship between fuel cost and emissions.Consequently,this work manages the Substantial Augmented Transformative Algorithm(SATA)to take care of the Combined Economic Emission Dispatch Problem(CEEDP)of warm units while fulfilling imperatives,for example,confines on generator limit,diminish the fuel cost,lessen the emission and decrease the force misfortune.SATA is a stochastic streamlining process that relies upon the development and knowledge of swarms.The goal is to minimize the total fuel cost of fossil-based thermal power generation units that generate and cause environmental pollution.The algorithm searches for solutions in the search space from the smallest to the largest in the case of forwarding search.The simulation of the proposed system is developed using MATLAB Simulink software.Simulation results show the effectiveness and practicability of this method in terms of economic and emission dispatching issues.The performance of the proposed system is compared with existing Artificial Bee Colony-Particle Swarm Optimization(ABC-PSO),Simulated Annealing(SA),and Differential Evolution(DE)methods.The fuel cost and gas emission of the proposed system are 128904$/hr and 138094.4652$/hr. 展开更多
关键词 Economic emission dispatch fuel cost substantial augmented transformative algorithm
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A low-carbon economic dispatch model for electricity market with wind power based on improved ant-lion optimisation algorithm
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作者 Renwu Yan Yihan Lin +1 位作者 Ning Yu Yi Wu 《CAAI Transactions on Intelligence Technology》 SCIE EI 2023年第1期29-39,共11页
Introducing carbon trading into electricity market can convert carbon dioxide into schedulable resources with economic value.However,the randomness of wind power generation puts forward higher requirements for electri... Introducing carbon trading into electricity market can convert carbon dioxide into schedulable resources with economic value.However,the randomness of wind power generation puts forward higher requirements for electricity market transactions.Therefore,the carbon trading market is introduced into the wind power market,and a new form of low-carbon economic dispatch model is developed.First,the economic dispatch goal of wind power is be considered.It is projected to save money and reduce the cost of power generation for the system.The model includes risk operating costs to account for the impact of wind power output variability on the system,as well as wind farm negative efficiency operating costs to account for the loss caused by wind abandonment.The model also employs carbon trading market metrics to achieve the goal of lowering system carbon emissions,and analyze the impact of different carbon trading prices on the system.A low-carbon economic dispatch model for the wind power market is implemented based on the following two goals.Finally,the solution is optimised using the Ant-lion optimisation method,which combines Levi's flight mechanism and golden sine.The proposed model and algorithm's rationality is proven through the use of cases. 展开更多
关键词 ant-lion optimisation algorithm carbon trading Levi flight low-carbon economic dispatch wind power market
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Modeling of Combined Economic and Emission Dispatch Using Improved Sand Cat Optimization Algorithm
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作者 Fadwa Alrowais Jaber S.Alzahrani +2 位作者 Radwa Marzouk Abdullah Mohamed Gouse Pasha Mohammed 《Computers, Materials & Continua》 SCIE EI 2023年第6期6145-6160,共16页
Combined Economic and Emission Dispatch(CEED)task forms multi-objective optimization problems to be resolved to minimize emission and fuel costs.The disadvantage of the conventional method is its incapability to avoid... Combined Economic and Emission Dispatch(CEED)task forms multi-objective optimization problems to be resolved to minimize emission and fuel costs.The disadvantage of the conventional method is its incapability to avoid falling in local optimal,particularly when handling nonlinear and complex systems.Metaheuristics have recently received considerable attention due to their enhanced capacity to prevent local optimal solutions in addressing all the optimization problems as a black box.Therefore,this paper focuses on the design of an improved sand cat optimization algorithm based CEED(ISCOA-CEED)technique.The ISCOA-CEED technique majorly concen-trates on reducing fuel costs and the emission of generation units.Moreover,the presented ISCOA-CEED technique transforms the equality constraints of the CEED issue into inequality constraints.Besides,the improved sand cat optimization algorithm(ISCOA)is derived from the integration of tra-ditional SCOA with the Levy Flight(LF)concept.At last,the ISCOA-CEED technique is applied to solve a series of 6 and 11 generators in the CEED issue.The experimental validation of the ISCOA-CEED technique ensured the enhanced performance of the presented ISCOA-CEED technique over other recent approaches. 展开更多
关键词 Economic and emission dispatch multi-objective optimization metaheuristics fuel cost minimization sand cat optimization
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Black Widow Optimization for Multi Area Economic Emission Dispatch
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作者 G.Girishkumar S.Ganesan +1 位作者 N.Jayakumar S.Subramanian 《Intelligent Automation & Soft Computing》 SCIE 2023年第1期609-625,共17页
The optimizationfield has grown tremendously,and new optimization techniques are developed based on statistics and evolutionary procedures.There-fore,it is necessary to identify a suitable optimization technique for a... The optimizationfield has grown tremendously,and new optimization techniques are developed based on statistics and evolutionary procedures.There-fore,it is necessary to identify a suitable optimization technique for a particular application.In this work,Black Widow Optimization(BWO)algorithm is intro-duced to minimize the cost functions in order to optimize the Multi-Area Economic Dispatch(MAED).The BWO is implemented for two different-scale test systems,comprising 16 and 40 units with three and four areas.The performance of BWO is compared with the available optimization techniques in the literature to demonstrate the strategy’s efficacy.Results show that the optimized cost for four areas with 16 units is found to be 7336.76$/h,whereas it is 121,589$/h for four areas with 40 units using BWO.It is also noted that optimization algo-rithms other than BWO require higher cost value.The best-optimized solution for emission is achieved at 9.2784e+06 tones/h,and it is observed that there is a considerable difference between the worst and the best values.Also,the suggested technique is implemented for large-scale test systems successfully with high precision,and rapid convergence occurs in MAED. 展开更多
关键词 Black widow optimization algorithm multi-objective multi-area economic dispatch emission optimization cost optimization
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Two-Stage Low-Carbon Economic Dispatch of Integrated Demand Response-Enabled Integrated Energy System with Ladder-Type Carbon Trading
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作者 Song Zhang Wensheng Li +3 位作者 Zhao Li Xiaolei Zhang Zhipeng Lu Xiaoning Ge 《Energy Engineering》 EI 2023年第1期181-199,共19页
Driven by the goal of“carbon neutrality”and“emission peak”,effectively controlling system carbon emissions has become significantly important to governments around the world.To this end,a novel two-stage low-carbo... Driven by the goal of“carbon neutrality”and“emission peak”,effectively controlling system carbon emissions has become significantly important to governments around the world.To this end,a novel two-stage low-carbon economic scheduling framework that considers the coordinated optimization of ladder-type carbon trading and integrated demand response(IDR)is proposed in this paper for the integrated energy system(IES),where the first stage determines the energy consumption plan of users by leveraging the price-based electrical-heat IDR.In contrast,the second stage minimizes the system total cost to optimize the outputs of generations with consideration of the uncertainty of renewables.In addition,to fully exploit the system’s emission reduction potential,a carbon trading cost model with segmented CO_(2) emission intervals is built by introducing a reward-penalty ladder-type carbon trading mechanism,and the flexible thermal comfort elasticity of customers is taken into account by putting forward a predicted mean vote index on the load side.The CPLEX optimizer resolves the two-stage model,and the study results on a modified IES situated in North China show the proposed model can effectively reduce carbon emissions and guarantee economical efficiency operation of the system. 展开更多
关键词 Integrated energy system low-carbon economic dispatch integrated demand response ladder-type carbon trading thermal comfort elasticity
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Two-Stage Optimal Dispatching of Wind Power-Photovoltaic-Solar Thermal Combined System Considering Economic Optimality and Fairness
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作者 Weijun Li Xin Die +2 位作者 Zhicheng Ma Jinping Zhang Haiying Dong 《Energy Engineering》 EI 2023年第4期1001-1022,共22页
Aiming at the problems of large-scale wind and solar grid connection,how to ensure the economy of system operation and how to realize fair scheduling between new energy power stations,a two-stage optimal dispatching m... Aiming at the problems of large-scale wind and solar grid connection,how to ensure the economy of system operation and how to realize fair scheduling between new energy power stations,a two-stage optimal dispatching model of wind power-photovoltaic-solar thermal combined system considering economic optimality and fairness is proposed.Firstly,the first stage dispatching model takes the overall economy optimization of the system as the goal and the principle of maximizing the consumption of wind and solar output,obtains the optimal output value under the economic conditions of each new energy station,and then obtains the maximum consumption space of the new energy station.Secondly,based on the optimization results of the first stage,the second stage dispatching model uses the dispatching method of fuzzy comprehensive ranking priority to prioritize the new energy stations,and then makes a fair allocation to the dispatching of the wind and solar stations.Finally,the analysis of a specific example shows that themodel can take into account the fairness of active power distribution of new energy stations on the basis of ensuring the economy of system operation,make full use of the consumption space,and realize the medium and long-term fairness distribution of dispatching plan. 展开更多
关键词 Economic optimality FAIRNESS combined power generation the fuzzy comprehensive ranking priority optimal dispatching
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Key technologies and applications of intelligent dispatching command for high-speed railway in China
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作者 Shuxin Ding Tao Zhang +2 位作者 Kai Sheng Yuanyuan Chen Zhiming Yuan 《Railway Sciences》 2023年第3期336-346,共11页
Purpose–The intelligent Central Traffic Control(CTC)system plays a vital role in establishing an intelligent high-speed railway(HSR)system.As the core of HSR transportation command,the intelligent CTC system is a new... Purpose–The intelligent Central Traffic Control(CTC)system plays a vital role in establishing an intelligent high-speed railway(HSR)system.As the core of HSR transportation command,the intelligent CTC system is a new HSR dispatching command system that integrates the widely used CTC in China with the practical service requirements of intelligent dispatching.This paper aims to propose key technologies and applications for intelligent dispatching command in HSR in China.Design/methodology/approach–This paper first briefly introduces the functions and configuration of the intelligent CTC system.Some new servers,terminals and interfaces are introduced,which are plan adjustment server/terminal,interface for automatic train operation(ATO),interface for Dynamic Monitoring System of Train Control Equipment(DMS),interface for Power Supervisory Control and Data Acquisition(PSCADA),interface for Disaster Monitoring,etc.Findings–The key technologies applied in the intelligent CTC system include automatic adjustment of train operation plans,safety control of train routes and commands,traffic information data platform,integrated simulation of traffic dispatching and ATO function.These technologies have been applied in the Beijing-Zhangjiakou HSR,which commenced operations at the end of 2019.Implementing these key intelligent functions has improved the train dispatching command capacity,ensured the safe operation of intelligent HSR,reduced the labor intensity of dispatching operators and enhanced the intelligence level of China’s dispatching system.Originality/value–This paper provides further challenges and research directions for the intelligent dispatching command of HSR.To achieve the objectives,new measures need to be conducted,including the development of advanced technologies for intelligent dispatching command,coping with new requirements with the development of China’s railway signaling system,the integration of traffic dispatching and train control and the application of AI and data-driven modeling and methods. 展开更多
关键词 High-speed railway Intelligent dispatching command Intelligent centralized traffic control Key technologies and application
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新能源电力系统不确定优化调度方法研究现状及展望 被引量:1
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作者 林舜江 冯祥勇 +2 位作者 梁炜焜 杨悦荣 刘明波 《电力系统自动化》 EI CSCD 北大核心 2024年第10期20-41,共22页
风电场和光伏电站出力的不确定性给电力系统优化调度带来很大技术挑战。文中主要介绍了考虑新能源不确定性的电力系统优化调度方法的研究现状及后续研究方向展望。首先,重点论述了各种不确定优化调度(UOD)方法,包括随机优化方法、鲁棒... 风电场和光伏电站出力的不确定性给电力系统优化调度带来很大技术挑战。文中主要介绍了考虑新能源不确定性的电力系统优化调度方法的研究现状及后续研究方向展望。首先,重点论述了各种不确定优化调度(UOD)方法,包括随机优化方法、鲁棒优化方法、随机鲁棒优化结合方法和基于人工智能技术的方法。其中,随机优化方法包括场景法、机会约束规划法和近似动态规划法;鲁棒优化方法包括传统鲁棒优化法和分布鲁棒优化法;随机鲁棒优化结合方法包括采样鲁棒优化法和分布鲁棒机会约束规划法。然后,介绍了每一种方法的优化模型形式、模型的转化和求解原理及其优缺点。最后,对UOD的后续重点研究方向进行展望,包括兼顾多个目标的UOD问题及多目标不确定优化方法、输配系统UOD问题及分布式不确定优化方法、考虑稳定性约束的UOD问题及含常微分方程约束的不确定优化方法、考虑管道传输动态的综合能源系统UOD问题及含偏微分方程约束的不确定优化方法。 展开更多
关键词 新能源电力系统 不确定优化调度 随机优化 鲁棒优化 近似动态规划
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基于等微增率并计及机组功率约束的火电机组最优负荷分配精确解
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作者 丁涛 黄雨涵 +5 位作者 张洪基 方万良 冯凯 冯树海 王正风 梁肖 《中国电机工程学报》 EI CSCD 北大核心 2024年第4期1446-1459,I0016,共15页
火电机组最优负荷分配是电力系统经济运行的重要模型,也是电力系统本科生专业基础课《电力系统分析》的重要教学内容之一。经典教科书采用等微增率方法求解该问题,并给出了相应的物理含义。由于等微增率法是基于不考虑火电机组上下界物... 火电机组最优负荷分配是电力系统经济运行的重要模型,也是电力系统本科生专业基础课《电力系统分析》的重要教学内容之一。经典教科书采用等微增率方法求解该问题,并给出了相应的物理含义。由于等微增率法是基于不考虑火电机组上下界物理约束而推导出来的,部分教科书补充了计及火电机组上下界物理约束时的情况,即如果某台机组的无约束最优解违背了上(下)界约束,则将该机组对应的最优解限制到相应的出力上(下)界,然后对其余火电机组再进行重新的等微增率分配。然而,简单算例表明,补充求解方法的适用范围是有限的。为此,该文对火电机组最优负荷分配问题进行重新探索,推导教材方法适用的一个充分条件与一个必要条件。面向本科生与研究生,分别提出考虑机组上下界约束后的最优负荷分配方法,并进行严格的理论推导。理论推导与大量的仿真算例表明,在机组数量较少时,教材中的求解方法有可能适用,而机组数较多时,可能出现不适用的情况。该文所提方法可以将适用范围扩展到机组数量较多的场景,并且进行严格理论推导。希望该文可以为《电力系统分析》教学过程与教材修订提供帮助。 展开更多
关键词 经济调度 最优负荷分配 等微增率 卡罗需-库恩–塔克(Karush-Kuhn-Tucker KKT)条件
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多态场景下考虑出行链重构的电动汽车多目标协同优化调度
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作者 朱永胜 孙贤 +3 位作者 谢晓峰 丁同奎 巫付专 史志鹏 《电力系统自动化》 EI CSCD 北大核心 2024年第9期129-141,共13页
电动汽车用户日内的充电计划具有规律性,但在突发事件影响下,电动汽车用户的充电行为则具有突发性和主观性。突发事件由用户影响到电动汽车的充放电过程,最终波及电力系统的稳定运行。首先,考虑实际出行中距离变化时用户的充电意愿,提... 电动汽车用户日内的充电计划具有规律性,但在突发事件影响下,电动汽车用户的充电行为则具有突发性和主观性。突发事件由用户影响到电动汽车的充放电过程,最终波及电力系统的稳定运行。首先,考虑实际出行中距离变化时用户的充电意愿,提出充电意愿模型,模拟用户的充电意愿区间;然后,基于电动汽车出行时空特性,将影响调度计划的突发事件分为4类,模拟4种事件对既定调度计划的影响,并综合考虑气温和电价等因素,对电动汽车进行充放电调度;最后,提出多态场景下储能站协同电动汽车的能量管理策略,对常态及两种极端条件下的电动汽车进行充放电调度。采用区域电网进行仿真,分析出行链重构在行为场景、事件类型、调度策略、集群规模、用户参与度和风电规模的条件中对电动汽车充放电调度的影响,验证了所提模型的合理性和有效性。 展开更多
关键词 电动汽车 出行不确定性 多态场景 充电意愿 充放电调度 需求响应 两阶段优化 多目标协同优化调度
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计及分布式储能的微电网群经济调度
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作者 何玉灵 王博 +4 位作者 孙凯 王海朋 杜晓东 吴学伟 韩志成 《电力科学与工程》 2024年第2期1-8,共8页
为提高微电网群调度效率、减少微电网运行成本,首先构建了计及分布式储能的微电网群优化调度模型。该模型以包含风、光、储的3个子微网和网侧储能所构成的交流微电网作为调度对象。在满足功率平衡等约束条件下,对负荷侧储能充放电次数... 为提高微电网群调度效率、减少微电网运行成本,首先构建了计及分布式储能的微电网群优化调度模型。该模型以包含风、光、储的3个子微网和网侧储能所构成的交流微电网作为调度对象。在满足功率平衡等约束条件下,对负荷侧储能充放电次数和单位时间内充放电功率进行限制;在考虑主网分时电价、系统发电成本,网侧储能放电成本条件下,采用遗传算法进行求解,得到计及分布式储能的微电网群经济调度方案,最终得到优化后的经济成本。算例计算结果表明,该运行调度模型可有效提高微电网群经济效益,从而验证了该模型的有效性。 展开更多
关键词 微电网 智能调度 分布式储能 遗传算法 经济调度
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基于低碳经济优化调度的电-碳联合需求响应改进策略研究
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作者 霍现旭 陈天恒 +2 位作者 魏立勇 庞超 李野 《电力系统及其自动化学报》 CSCD 北大核心 2024年第5期99-104,113,共7页
随着中国双碳目标的提出以及全国碳市场的快速发展,探索碳市场环境下电力系统的发展和优化调度策略具有十分重要的意义。以电力系统最小化成本和碳排放量为目标,提出了一种基于低碳经济优化调度的电-碳联合需求响应改进策略,该策略将碳... 随着中国双碳目标的提出以及全国碳市场的快速发展,探索碳市场环境下电力系统的发展和优化调度策略具有十分重要的意义。以电力系统最小化成本和碳排放量为目标,提出了一种基于低碳经济优化调度的电-碳联合需求响应改进策略,该策略将碳排放权交易市场中的碳成本引入到需求响应目标中,通过日前模拟优化调控的方法,获得系统各节点参与需求响应的最优策略。研究结果显示,所提改进策略能够在满足需求响应要求的条件下有效减少碳排放。 展开更多
关键词 碳市场 需求响应 最优调度 策略改进 低碳经济
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数据挖掘算法在作业车间调度问题中的应用
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作者 王艳红 赵也践 刘文鑫 《计算机集成制造系统》 EI CSCD 北大核心 2024年第2期520-536,共17页
为了从与日俱增的车间生产数据中提取调度规则来指导生产调度任务,提出一种基于数据挖掘的调度算法。将最小化最大完工时间设置为性能指标,从作业车间的离线生产数据中建立合适的调度样本集;将建立的调度样本集按合适的比例分为训练集... 为了从与日俱增的车间生产数据中提取调度规则来指导生产调度任务,提出一种基于数据挖掘的调度算法。将最小化最大完工时间设置为性能指标,从作业车间的离线生产数据中建立合适的调度样本集;将建立的调度样本集按合适的比例分为训练集和测试集;用数据挖掘算法中的分类回归树(CART)从训练集中获取有效的调度知识,形成CART树状调度规则库;为了验证所得调度规则的有效性,将调度规则与遗传算法结合,设计了一种基于数据挖掘和调度规则的遗传算法作为调度算法来求解作业车间调度问题。通过对不同作业车间经典算例进行仿真与测试,验证了所提调度规则和调度算法的有效性与优越性。 展开更多
关键词 数据挖掘 作业车间调度 分类回归树 调度规则
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