基于改进的海鸥算法优化门控递归单元神经网络的短期电力负荷预测

Q3 Engineering EAI Endorsed Transactions on Energy Web Pub Date : 2024-04-15 DOI:10.4108/ew.5282
Mengfan Xu, Junyang Pan
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引用次数: 0

摘要

引言: 电网的复杂性、天气条件的变化、地理位置的多样性以及节假日活动等因素全面影响着电力负荷的正常运行。电力负荷变化具有非静止性、随机性、季节性和高波动性等特点。因此,如何构建准确的短期电力负荷预测模型已成为电力正常运行维护的关键:方法:针对目前短期电力负荷预测方法准确性不高的问题,提出了一种分解-优化-积分混合负荷预测方法。结果:采用完全集合经验模态分解法对原始电力负荷时间序列进行分解,同时利用皮尔逊相关系数分析电力负荷影响因素的相关性。利用操纵变量的随机自适应非线性调整策略和差分变异列维飞行策略,克服了海鸥优化算法陷入局部最优的问题,提高了算法的搜索效率。然后,通过改进的海鸥优化算法优化门控循环单元隐层参数,构建短期电力负荷预测模型。结果表明,所提出的方法提高了预测模型的准确性。结论:CEEMD 方法用于分解原始负荷时间序列,提高了测量模型的准确性。与其他预测模型相比,基于改进 SOA 优化的 GRU 预测模型不仅预测精度更高,而且耗时最少。
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Short-term Electricity Load Forecasting Based on Improved Seagull Algorithm Optimized Gated Recurrent Unit Neural Network
INTRODUCTION: The complexity of the power network, changes in weather conditions, diverse geographical locations, and holiday activities comprehensively affect the normal operation of power loads. Power load changes have characteristics such as non stationarity, randomness, seasonality, and high volatility. Therefore, how to construct accurate short-term power load forecasting models has become the key to the normal operation and maintenance of power.OBJECTIVES: Accurate short-term power load forecasting helps to arrange power consumption planning, optimize power usage and largely reduce power system losses and operating costs.METHODS: A hybrid decomposition-optimization-integration load forecasting method is proposed to address the problems of low accuracy of current short-term power load forecasting methods.RESULTS: The original power load time series is decomposed using the complete ensemble empirical modal decomposition method, while the correlation of power load influencing factors is analysed using Pearson correlation coefficients. The seagull optimisation algorithm is overcome to fall into local optimality by using the random adaptive non-linear adjustment strategy of manipulated variables and the differential variational Levy flight strategy, which improves the search efficiency of the algorithm. Then, the The gated cyclic unit hidden layer parameters are optimised by the improved seagull optimisation algorithm to construct a short-term electricity load forecasting model.The effectiveness of the proposed method is verified by simulation experimental analysis. The results show that the proposed method has improved the accuracy of the forecasting model.CONCLUSION: The CEEMD method is used to decompose the original load time series, which improves the accuracy of the measurement model. The GRU prediction model based on improved SOA optimization not only has better prediction accuracy than other prediction models, but also consumes the least amount of time compared to other prediction models. 
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来源期刊
EAI Endorsed Transactions on Energy Web
EAI Endorsed Transactions on Energy Web Energy-Energy Engineering and Power Technology
CiteScore
2.60
自引率
0.00%
发文量
14
审稿时长
10 weeks
期刊介绍: With ICT pervading everyday objects and infrastructures, the ‘Future Internet’ is envisioned to undergo a radical transformation from how we know it today (a mere communication highway) into a vast hybrid network seamlessly integrating knowledge, people and machines into techno-social ecosystems whose behaviour transcends the boundaries of today’s engineering science. As the internet of things continues to grow, billions and trillions of data bytes need to be moved, stored and shared. The energy thus consumed and the climate impact of data centers are increasing dramatically, thereby becoming significant contributors to global warming and climate change. As reported recently, the combined electricity consumption of the world’s data centers has already exceeded that of some of the world''s top ten economies. In the ensuing process of integrating traditional and renewable energy, monitoring and managing various energy sources, and processing and transferring technological information through various channels, IT will undoubtedly play an ever-increasing and central role. Several technologies are currently racing to production to meet this challenge, from ‘smart dust’ to hybrid networks capable of controlling the emergence of dependable and reliable green and energy-efficient ecosystems – which we generically term the ‘energy web’ – calling for major paradigm shifts highly disruptive of the ways the energy sector functions today. The EAI Transactions on Energy Web are positioned at the forefront of these efforts and provide a forum for the most forward-looking, state-of-the-art research bringing together the cross section of IT and Energy communities. The journal will publish original works reporting on prominent advances that challenge traditional thinking.
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