基于PSO-DWT-MLR的系统和终端用户短期负荷预测

Happy Aprillia, Chao-Ming Huang, Hong-Tzer Yang
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引用次数: 0

摘要

电力系统和电力用户的电力负荷都具有非平稳和不确定的特点,因此很难建立适当的模型来准确预测负荷的变化。本文提出了一种同时考虑系统负荷和用户总负荷的短期负荷预测模型。该预测方法在多元线性回归模型(PSO-DWT-MLR)中采用基于粒子群优化的离散小波变换来捕捉负荷需求与外源输入之间的非线性关系。利用粒子群算法从DWT中选择细节数据和近似数据的最优组合来构建MLR模型。与实际天气资料相结合,建议的模型分别在独立系统运营商-新英格兰(ISO-NE)的系统侧数据集和最终用户数据集以及汇总负载数据中进行验证。结果表明,PSO-DWT可以提高MLR对非平稳载荷条件的预测性能,并且可以提供比现有方法更准确的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short Term Load Forecasting Using PSO-DWT-MLR at System and End-User Levels
The electric loads of both power system and power consumers have non-stationary and uncertain characteristics that lead to difficulties in constructing an adequate model to accurately predict the load variations. This paper proposes a novel prediction model of short term load forecasting (STLF) for both system load and aggregated load of power consumers customers. The prediction method uses a particle swarm optimization based discrete wavelet transformation in multiple linear regression model (PSO-DWT-MLR) to capture the non-linear relationship between the load demand and the exogenous inputs. PSO was used to select the optimal combination of details and approximations data from DWT to construct an MLR model. Associated with actual weather information, validation of the proposed model is conducted in both system-side data set and end-user data set in Independent System Operator-New England (ISO-NE) and aggregated load data respectively. The results demonstrate that PSO-DWT can boost the performance of MLR for prediction of nonstationary load conditions and can provide more accurate prediction than existing methods.
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