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Acoustic field calibration for noise prediction: The CALCOM' 10 data set

机译:用于噪声预测的声场校准:CALCOM'10数据集

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Wave energy is one of the marine renewable energies that are becoming increasingly explored. One of the concerns about the respective ocean plants is the noise generated by the mechanical energy converters. This noise may affect the fauna surrounding the energy plant, what induces the idea of planning the location of a prospective plant, optimum in terms of noise minimization. Naturally, in such an approach, the plant noise can be predicted, using information concerning the ocean geometric, water column and bottom properties, if available. This information can be fed to an acoustic propagation code, to solve an acoustic forward problem. Inevitably, this knowledge is often incomplete, and the use of guesses or inferences from nautical charts can lead to erroneous noise predictions. This paper presents a noise prediction tool which can be divided into two steps. The first step consists of characterizing the candidate ocean area, in terms of the environmental properties relevant to acoustic propagation. In the second step, the environmental characteristics are fed to a computational acoustic propagation model, which provides estimates of the plant-noise generated in the candidate area. The first step uses at-sea measured acoustic data, during the CALCOM'10 sea trial (in Portugal), to solve an acoustic inverse problem, which gives environmental estimates. This procedure can be seen as a "field model calibration", in that the estimated environmental properties are tailored to model the acoustic data. The second step uses the estimates in a forward modeling problem, with the same propagation code. In numerical terms, differences greater than 4.4 dB in the median of the modeled transmission loss difference have been observed, upto « 1.6 km from the acoustic source. The results show that the field calibration is important to better model the data at hand, and thus act as a noise prediction tool, as compared to a procedure in which only a partial a p- - riori knowledge of the candidate oceanic area is available. The results are promising, in terms of the application of the present method in the project of ocean power plants.
机译:波动力是越来越探索的海洋可再生能源之一。关于各个海洋植物的关注之一是由机械能转换器产生的噪声。这种噪音可能会影响能源植物周围的动物区,诱导规划潜在植物的位置的想法,在噪音最小化方面最佳。当然,在这种方法中,可以使用关于海洋几何,水柱和底部性质的信息来预测植物噪声。该信息可以馈送到声学传播代码,以解决声学前向问题。不可避免地,这种知识往往是不完整的,并且猜测航海图表的猜测或推论可能导致错误的噪声预测。本文介绍了噪声预测工具,可分为两个步骤。第一步包括在与声学传播相关的环境特性方面表征候选海洋区域。在第二步中,将环境特征馈送到计算声学传播模型,其提供候选区域中产生的植物噪声的估计。第一步使用海上测量的声学数据,在Calcom'10海 - 审判(葡萄牙),解决了一个声学逆问题,这给出了环境估计。该过程可以被视为“现场模型校准”,因为估计的环境属性被定制以模拟声学数据。第二步使用正向建模问题中的估计,具有相同的传播代码。在数值术语中,已经观察到建模传输损失差的中位数大于4.4 dB的差异,距离声源1.6公里。结果表明,与候选海洋区域的仅部分P-RIORI知识的过程相比,该现场校准是更好地模拟手头的数据,从而使其作为噪声预测工具。在海洋发电厂项目中的应用,结果是有前途的。

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