斯里兰卡Kalpitiya地区风力涡轮机功率波动的自适应预测

M. Narayana, S. Witharana
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引用次数: 5

摘要

水力发电是斯里兰卡国家电网的主要可再生能源,占总装机容量的48%。然而,由于环境和资源的限制,水电的进一步发展受到限制。与此同时,电力需求预计将以每年8% - 10%的速度增长,这促使人们需要寻找替代能源。风能已被确定为斯里兰卡发电的有希望的候选能源。然而,为了可靠地整合风能,必须了解风的易挥发性。风速-时间序列数据通常表现为自相关,可定义为对前值的依赖程度。时间序列分析一般采用统计模型和神经网络技术。目前的研究显示了自适应数字滤波器如何作为一种建模、预测和监测技术,以及它们如何有助于成功地将风力发电并入国家电网。西北部的Kalpitiya地区已被确定为该国风力发电的潜在地点之一。通过测量风速和风力涡轮机的性能,本研究还预测了在Kalpitiya地区安装的商用风力涡轮机的发电量,并调查了电网整合的功率波动。
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Adaptive prediction of power fluctuations from a wind turbine at Kalpitiya area in Sri Lanka
Hydro power is the major renewable energy contributor to the national grid in Sri Lanka amounting to 48% of the total installed capacity. Further expansion of hydropower however is limited due to environmental and resource constraints. Meanwhile the demand for electricity is estimated to rise at an annual rate of 8% - 10% prompting the need to find alternative power options. The wind energy has been identified as a promising candidate to generate electricity in Sri Lanka. However for a reliable integration of wind energy the volatile nature of wind has to be understood. Wind speed-time series data typically exhibit autocorrelation, which can be defined as the degree of dependence on preceding values. Generally, statistical models and neural network techniques are being used for time series analysis. Present study shows how an adaptive digital filter can serve as a modelling, forecasting and monitoring technique, and, how they contribute to a successful integration of wind power into the national grid. The north-western region of Kalpitiya has been identified as one of the potential location for wind power generation in the country. This study also predicts power generation and investigates power fluctuations for grid integrations of a commercially available wind turbine installed in Kalpitiya area by using measured wind speeds and performance of the wind turbine.
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