Analysis of intelligent agent operation strategy of power system scheduling based on intelligent optimization algorithm
Author:
Zuo Jian1, Yang Minjing1, He Xiangzhen1, Bao Bo1, Yang Yun1, Wu Guobing1, Lan Xuanli2, Liu Feng2
Affiliation:
1. Power Dispatch and Control Center of Guangdong Power Grid Co., Ltd ., Guangzhou , Guangdong , , China 2. Beijing Tsintergy Technology Co., Ltd ., Beijing , , China .
Abstract
Abstract
This paper first explores the basic process and characteristics of the intelligent algorithm, calculates its fitness function after setting and initializing the intelligent algorithm population, and iterates continuously to obtain a satisfactory optimal solution on the basis of the initialized stochastic solution. Then the optimization of the firefly algorithm is studied. After initializing the firefly population, the random attraction model and the probability factor are introduced to optimize the algorithm. Then, the power scheduling intelligent agent strategy is studied in depth, and the structure and operation process of the intelligent agent operation strategy is determined, as well as its application areas are studied. Finally, the effect of grid load forecasting by power dispatching intelligent agents is analyzed and compared before and after the application of intelligent agent operation strategy in the power system. In terms of grid load prediction accuracy, the actual and prediction errors are basically between 0.02-0.16, which is very close to the actual value. In terms of user satisfaction, the previous user satisfaction was basically 0.75-0.8, and the maximum satisfaction was basically increased to more than 0.9 after applying the intelligent agent operation strategy. The intelligent agent operation strategy based on an intelligent optimization algorithm can effectively dispatch the power system and improve user satisfaction.
Publisher
Walter de Gruyter GmbH
Subject
Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science
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