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Wave Height Prediction for Maximum Power Extraction Scheme of Air-Turbine of an OWC based Wave Energy Plant

机译:基于OWC波能量厂的空气 - 汽轮机最大功率提取方案的波高预测

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Ocean wave energy has not yet gained popularity as a renewable energy source, because of highly varying nature of available wave power. Despite the seasonal/daily variations in the input hydraulic power available, extracting the maximum power from the installation requires controlling the reflected electrical load on the generator dynamically guessing the wave height on short-time basis. Such an effort of maximizing the air- turbine’s efficiency is not complete without a wave height prediction algorithm setting reference to the turbine speed. Considering wave data pertaining to the site of Indian Wave energy plant, prediction of Significant wave height on hourly basis is carried out using a Neural Network employing Levenberg Marquardt (LM) algorithm for back propagation/ supervised learning. Normal back-propagation based (Least Mean Square) algorithm is compared with LM method, and the latter one is found to yield better results. Based on predicted significant wave height, prediction of the actual height of the immediately following wave is obtained by employing Non-linear Auto-Regressive Neural Network (NARNN) using previous actual wave heights as input and this model is compared with NAR neural network with exogenous input (NARXNN). The results obtained for typical significant wave heights are provided. Improvement achieved in the efficiency of the impulse turbine of OWC based Wave Energy Plant is verified by employing the concept of prediction of wave height.
机译:由于可用波力的高度变化,海浪能量尚未受到普及作为可再生能源。尽管输入液压功率的季节性/日常变化可用,但从安装中提取最大功率需要在短时间内控制发电机上的反射电负载,在短时间内猜测波浪高度。在没有波浪高预测算法设置对涡轮机速度的情况下,可以最大化空气涡轮机的效率的这种努力不完整。考虑到与印度波能源设备的部位有关的波浪数据,使用采用Levenberg Marquardt(LM)算法的神经网络来进行每小时对每小时进行显着波高的预测,以便回到传播/监督学习。基于正常的背部传播(最小均方)算法与LM方法进行比较,并发现后者产生更好的结果。基于预测的显着波浪高度,通过使用以前的实际波浪高度作为输入使用非线性自动回归神经网络(NARNN)来获得立即跟随波的实际高度的预测,并且将该模型与外源的NAR神经网络进行比较输入(narxnn)。提供了典型的显着波高获得的结果。通过采用波浪高度预测的概念来验证在基于OWC的波能量植物的脉冲涡轮机的效率上实现的改进。

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