Forecasting Seasonal Rainfall in Zambia – An Artificial Neural Network Approach

Lillian Mzyece, Mayumbo Nyirenda, Monde K. Kabemba, Grey Chibawe
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引用次数: 1

Abstract

Weather forecasting is an ever-challenging area of investigation for scientists. It is the application of science and technology in order to predict the state of the atmosphere for a given time and location. Rainfall is one of the weather parameters whose accurate forecasting has significant implications for agriculture and water resource management. In Zambia, agriculture plays a key role in terms of employment and food security. Rainfall forecasting is one of the most complicated and demanding operational responsibilities carried out by meteorological services all over the world. Long-term rainfall prediction is even more a challenging task. It is mainly done by experts who have gained sufficient experience in the use of appropriate forecasting techniques like modelling. It is mainly done by experts who have gained sufficient experience in the use of appropriate forecasting techniques like modelling. In this paper, a rainfall forecasting model using Artificial Neural Network is proposed as a model that that can be 'trained' to mimic the knowledge of rainfall forecasting experts. This makes it possible for researchers to adapt different techniques for different stages in the forecasting process. We begin by noting the five main stages in the seasonal rainfall forecasting process. We then apply artificial neural networks at each step. Initial results show that the artificial neural networks can successfully replace the currently used processes together with the expert knowledge. We further propose the use of these neural networks for teaching such forecasting processes, as they make documentation of the forecasting process easier and hence making the educational process of teaching to forecast seasonal rainfall easier as well. Artificial Neural Networks are reliable, handle more data at one time by virtual of being computer based, are less tedious and less dependent on user experience.
预测赞比亚的季节性降雨——一种人工神经网络方法
天气预报对科学家来说是一个极具挑战性的研究领域。它是科学技术的应用,目的是预测某一特定时间和地点的大气状态。降雨是天气参数之一,其准确预报对农业和水资源管理具有重要意义。在赞比亚,农业在就业和粮食安全方面发挥着关键作用。降雨预报是世界各地气象部门最复杂和要求最高的业务职责之一。长期降雨预测更是一项具有挑战性的任务。它主要是由在使用适当的预测技术(如建模)方面有足够经验的专家完成的。它主要是由在使用适当的预测技术(如建模)方面有足够经验的专家完成的。本文提出了一种使用人工神经网络的降雨预测模型,该模型可以通过“训练”来模拟降雨预测专家的知识。这使得研究人员有可能在预测过程的不同阶段采用不同的技术。我们首先注意到季节降雨预报过程中的五个主要阶段。然后我们在每一步应用人工神经网络。初步结果表明,人工神经网络可以结合专家知识成功地替代目前使用的过程。我们进一步建议使用这些神经网络来教授这种预测过程,因为它们使预测过程的记录更容易,因此也使预测季节性降雨的教学过程更容易。人工神经网络是可靠的,同时处理更多的数据,虚拟的计算机为基础,不那么繁琐,不依赖于用户体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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