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Statistical Approach for Wind Speed Forecasting Using Markov Chain Modelling as the Probabilistic Model

机译:马尔可夫链模型作为概率模型的风速预测统计方法

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Electricity supply and demand have increased significantly over the years largely due to population and economic growth. However, the use of energy has witness tremendous challenge in recent years because of high cost of raw materials for generation (fossil fuels), environmental concerns and sustainability of resources. In recent years, the use of renewable energy resource takes a centered stage with wind energy as the front runner. This is largely due to its availability and maturity in technology. The biggest challenge for generating electricity from wind is its inherent property of speed intermittency; it also affects correct forecasting for future planning. Statistical approach using Markov modelling method is used to predict wind speed using dataset from a location collected over 24hrs period at an interval of 10mins. Results from this method shows it performs well during the early periods with Individual Absolute Error between 0.3-1.43 during the first five (5) periods of the forecast and for the last five periods the absolute error is from 1.3 to 3.0 making Markov probabilistic model good for very short term forecasting of wind speed.
机译:多年来,由于人口和经济增长,电力供需已显着增加。但是,由于发电原料(化石燃料)的高成本,对环境的关注以及资源的可持续性,近年来能源的使用面临着巨大的挑战。近年来,可再生能源的利用处于中心位置,以风能为先导。这很大程度上是由于其技术的可用性和成熟度。利用风能发电的最大挑战是其速度间歇性的内在特性。它还会影响对未来计划的正确预测。使用Markov建模方法的统计方法用于使用数据集来预测风速,该数据集是在24小时内以10分钟为间隔从一个位置收集的。该方法的结果表明,该方法在早期阶段表现良好,在预测的前五(5)期内个体绝对误差在0.3-1.43之间,而在最后五个时期,绝对误差在1.3至3.0之间,这使马尔可夫概率模型良好对风速进行非常短期的预测。

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