Photovoltaic power generation prediction and optimization configuration model based on GPR and improved PSO algorithm

Zhennan Zhang, Zhenliang Duan, Lingwei Zhang
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Abstract

As the growing demand for energy as well as the strengthening of environmental awareness, photovoltaic power generation, as a clean and renewable energy source, has gradually attracted people's attention and attention. To facilitate the dispatching and planning of power system, this study uses historical data and meteorological data to build a photovoltaic power generation prediction and configuration optimization model on the ground of Gaussian process regression and improved particle swarm optimization algorithm. The simulation results show that the regression prediction curve of the Gaussian process regression prediction model is the closest to the real curve, and the prediction curve is stable and not easily disturbed by noise data. The Root-mean-square deviation and the average absolute proportional error of the model are small, and the disparity in the predicted value and the true value of the model is small; The integration of multi factor data has improved the accuracy of prediction data, and the regression prediction effect is good. The improved Particle swarm optimization algorithm could continuously enhance in the search for the optimal solution, and the Rate of convergence is fast. The Pareto solution can provide different solutions suitable for photovoltaic power generation optimization. Reasonable optimization configuration can effectively reduce active power line loss and voltage deviation, with the maximum reduction values reaching 132kW and 0.028, respectively. The research and design of predictive models and optimized configuration models can promote the formation of smart grids.
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基于 GPR 和改进 PSO 算法的光伏发电预测和优化配置模型
随着能源需求的不断增长以及环保意识的不断加强,光伏发电作为一种清洁的可再生能源,逐渐引起了人们的关注和重视。为便于电力系统调度和规划,本研究利用历史数据和气象数据,在高斯过程回归和改进粒子群优化算法的基础上,建立了光伏发电预测和配置优化模型。仿真结果表明,高斯过程回归预测模型的回归预测曲线最接近真实曲线,且预测曲线稳定,不易受噪声数据干扰。模型的均方根偏差和平均绝对比例误差小,模型预测值与真实值差距小;多因素数据的整合提高了预测数据的准确性,回归预测效果好。改进后的粒子群优化算法在寻找最优解的过程中不断改进,收敛速度快。帕累托解能提供适合光伏发电优化的不同方案。合理的优化配置能有效降低有功功率线损和电压偏差,最大降低值分别达到 132kW 和 0.028。预测模型和优化配置模型的研究与设计可促进智能电网的形成。
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