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Fuzzy Modeling and Similarity Based Short Term Load Forecasting Using Swarm Intelligence-A Step Towards Smart Grid

机译:基于模糊建模与相似性的基于群体智能的短期负荷预测 - 迈向智能电网的步骤

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There are a lot of uncertainties in planning and operation of electric power system, which is a complex, nonlinear, and non-stationary system. Advanced computational methods are required for planning and optimization, fast control, processing of field data, and coordination across the power system for it to achieve the goal to operate as an intelligent smart power grid and maintain its operation under steady state condition without significant deviations. State-of-the-art Smart Grid design needs innovation in a number of dimensions: distributed and dynamic network with two-way information and energy transmission, seamless integration of renewable energy sources, management of intermittent power supplies, real time demand response, and energy pricing strategy. One of the important aspects for the power system to operate in such a manner is accurate and consistent short term load forecasting (STLF). This paper presents a methodology for the STLF using the similar day concept combined with fuzzy logic approach and swarm intelligence technique. A Euclidean distance norm with weight factors considering the weather variables and day type is used for finding the similar days. Fuzzy logic is used to modify the load curves of the selected similar days of the forecast by generating the correction factors for them. The input parameters for the fuzzy system are the average load, average temperature and average humidity differences of the forecasted previous day and its similar days. These correction factors are applied to the similar days of the forecast day. The tuning of the fuzzy input parameters is done using the Particle Swarm Optimization (PSO) and Evolutionary Particle Swarm Optimization (EPSO) technique on the training data set of the considered data and tested. The results of load forecasting show that the application of swarm intelligence for load forecasting gives very good forecasting accuracy. Both the variants of Swarm Intelligence PSO and EPSO perform very well with EPSO an edge over the PSO with respect to forecast accuracies.
机译:电力系统的规划和运营存在很多不确定性,这是一种复杂的,非线性和非静止系统。规划和优化,快速控制,现场数据处理以及电源系统的协调需要先进的计算方法,以实现作为智能智能电网运行的目标,并在没有显着偏差的情况下保持其运行。最先进的智能电网设计需要在许多尺寸方面创新:分布式和动态网络,具有双向信息和能量传输,无缝集成可再生能源,间歇性电源管理,实时需求响应,以及能源定价策略。以这种方式操作的电力系统的重要方面是准确且一致的短期负荷预测(STLF)。本文介绍了使用类似的日概念与模糊逻辑方法和群体智能技术相结合的STLF方法。考虑天气变量和日型的重量因子的欧几里德距离标准用于查找类似的日子。模糊逻辑用于通过为它们产生校正因子来修改预测的所选类似天的负载曲线。模糊系统的输入参数是前一天预测的平均负荷,平均温度和平均湿度差异及其类似的日子。这些校正因子适用于预测日的类似天。使用粒子群优化(PSO)和进化粒子群优化(EPSO)技术在所考虑的数据集的训练数据集上进行调整,并进行测试。负荷预测结果表明,群体智能对负载预测的应用提供了非常好的预测精度。群体智能PSO的变体和EPSO都与EPSO相对于预测精度相比,在PSO上进行了良好。

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