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基于机器学习的沿海水环境保护中海水水质预测

Machine learning based marine water quality prediction for coastal hydro-environment management.

机构信息

Department of Civil and Environmental Engineering, The Hong Kong Polytechnic University, Hung Hom, Kowloon, 999077, Hong Kong Special Administrative Region.

Department of Civil and Environmental Engineering, The Hong Kong Polytechnic University, Hung Hom, Kowloon, 999077, Hong Kong Special Administrative Region.

出版信息

J Environ Manage. 2021 Apr 15;284:112051. doi: 10.1016/j.jenvman.2021.112051. Epub 2021 Jan 28.

Abstract

During the past three decades, harmful algal blooms (HAB) events have been frequently observed in marine waters around many coastal cities in the world including Hong Kong. The increasing occurrence of HAB has caused acute influences and damages on water environment and marine aquaculture with millions of monetary losses. For example, the Tolo Harbour is one of the most affected areas in Hong Kong, where more than 30% HAB occurred. In order to forewarn the potential HAB incidents, the machine learning (ML) methods have been increasingly resorted in modelling and forecasting water quality issues. In this study, two different ML methods - artificial neural networks (ANN) and support vector machine (SVM) - are implemented and improved by introducing different hybrid learning algorithms for the simulations and comparative analysis of more than 30-year measured data, so as to accurately forecast algal growth and eutrophication in Tolo Harbour in Hong Kong. The application results show the good applicability and accuracy of these two ML methods for the predictions of both trend and magnitude of the algal growth. Specifically, the results reveal that ANN is preferable to achieve satisfactory results with quick response, while the SVM is suitable to accurately identify the optimal model but taking longer training time. Moreover, it is demonstrated that the used ML methods could ensure robustness to learn complicated relationship between algal dynamics and different coastal environmental variables and thereby to identify significant variables accurately. The results analysis and discussion of this study also indicate the potentials and advantages of the applied ML models to provide useful information and implications for understanding the mechanism and process of HAB outbreak and evolution that is helpful to improving the water quality prediction for coastal hydro-environment management.

摘要

在过去的三十年中,有害藻类大量繁殖(HAB)事件在世界许多沿海城市的海洋水域中频繁发生,包括香港。HAB 的频繁发生对水环境和海水养殖业造成了严重的影响和破坏,造成了数百万美元的经济损失。例如,吐露港是香港受影响最严重的地区之一,其中超过 30%发生了 HAB。为了预警潜在的 HAB 事件,机器学习(ML)方法已越来越多地用于建模和预测水质问题。在这项研究中,引入了不同的混合学习算法,实现和改进了两种不同的 ML 方法——人工神经网络(ANN)和支持向量机(SVM),以便对超过 30 年的实测数据进行模拟和比较分析,从而准确预测香港吐露港的藻类生长和富营养化。应用结果表明,这两种 ML 方法对于预测藻类生长的趋势和幅度都具有良好的适用性和准确性。具体而言,结果表明 ANN 更适合快速响应以达到令人满意的结果,而 SVM 则适合准确识别最佳模型,但需要更长的训练时间。此外,研究还表明,所使用的 ML 方法能够确保学习藻类动态与不同沿海环境变量之间复杂关系的稳健性,从而准确识别重要变量。这项研究的结果分析和讨论还表明,所应用的 ML 模型具有提供有用信息和启示的潜力和优势,有助于理解 HAB 爆发和演变的机制和过程,从而有助于改善沿海水生态环境管理的水质预测。

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