可再生能源发电长期预测的数据驱动方法

S. Gugaliya, Durgesh D, S. Kumar, A. Sheikh
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引用次数: 0

摘要

随着最近化石燃料发电的灭绝,有一个范式转向可再生能源(RES)为基础的发电。可再生能源虽然是清洁能源,但由于对环境条件的依赖,存在间歇性的问题。为了解决这一问题,本文着重于利用现有数据对太阳能和风能发电数据进行预测,以减轻电力供需不匹配的影响,并促进需求侧管理计划。为了实现这一要求,本文实现了动态模态分解(DMD)算法来预测太阳能和风力发电。DMD是一种通过将数据简化为其主要模式来预测系统状态的策略,这些模式来自一系列训练数据。即使在嘈杂的环境中,主模式对于确定系统的行为和预测未来状态也很有用。利用DMD算法对不同测试场景下的太阳能、风能等RES数据进行了预测。为了验证预测算法的有效性,计算了评估指标,从预测结果和现有指标数据可以看出,DMD算法在不同的情况下表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Driven Approach for Long Term Forecasting of Renewable Energy Generation
With the recent issues of the fossil fuels extinction for the electricity generation there is a paradigm shift towards renewable energy sources (RES) based generation. Even though the RES are clean source of energy, it suffers from the issue of intermittency due to the dependency on environmental condition. To address this the paper focuses on the forecasting of solar and wind power generation data using the available data to mitigate the effect of electricity demand-supply mismatch and facilitate the demand-side management program. For achieving this claims the paper implements the Dynamic Mode Decomposition (DMD) algorithm for forecasting the solar and wind generation. The DMD is a strategy for predicting system states by reducing data down into its primary modes, which are derived from a series of training data. The primary modes are useful for determining the system’s behaviour and projecting future states even in a noisy environment. Using the DMD algorithm the RES such as solar and wind energy data is predicted in different test scenarios. To test the effectiveness of prediction algorithm the evaluation metrics are calculated and from the prediction results and the metrics data available it can be claimed that the DMD algorithm performs better in different case scenarios.
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