Prediction of Mosquito Prevalence in a Warm Semi-Arid Climate using Artificial Neural Network (ANN)

Felicia Cletus, B. Y. Baha, O. Sarjiyus
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Abstract

Mosquito is a disease-causing organism that causes harm to humans and animals alike. Over the years, vector control measures such as the use of insecticides, treated mosquito net, and the prediction of mosquito prevalence using statistical tools and Artificial Neural Network models in different weather terrain have not completely eradicated the problems associated with prevalence of mosquito. More so, there is no research available in literature to predict the prevalence of mosquito using artificial neural network in a warm semi-arid climate such as that of Yola, Northeastern Nigeria. This research endeavored to achieve this aim. This study built a prototype artificial neural network model that is capable of predicting mosquito prevalence. The model is a feed forward multi-layer perceptron that was implemented using the supervised learning method and optimized using the back propagation algorithm. The model has four (4) input features, which are weather data (maximum temperature, minimum temperature, relative humidity and rainfall) which were adopted for the research. After compilation, the new model was trained and validated using sourced data by the researcher. To train the model, 80% of the data was used while 20% was used for the validation. The proposed model is a keras sequential classification model that was built in anaconda using the python programming language. The optimal model has three hidden layers of 40 30 and 20 neurons with Sigmoid and ReLu activation function respectively. The simulation of the prototype model recorded 96.67% accuracy with good fit. This research shows that the artificial neural network model is an effective tool in predicting mosquito prevalence in a warm semi-arid climatic region and thus recommends the use of more data and training epochs to increase accuracy and subsequent implementation of the model in real life for prediction of mosquito prevalence.
基于人工神经网络(ANN)的温暖半干旱气候下蚊虫流行预测
蚊子是一种致病生物,对人类和动物都造成伤害。多年来,媒介控制措施,如使用杀虫剂、处理过的蚊帐,以及利用统计工具和人工神经网络模型在不同天气地形下预测蚊子流行情况,并没有完全根除与蚊子流行有关的问题。更重要的是,文献中没有研究可以利用人工神经网络预测在尼日利亚东北部约拉等温暖的半干旱气候中蚊子的流行情况。本研究努力实现这一目标。本研究建立了一个能够预测蚊虫流行的原型人工神经网络模型。该模型是一个前馈多层感知器,使用监督学习方法实现,并使用反向传播算法进行优化。模型有4个输入特征,分别是研究中采用的天气数据(最高温度、最低温度、相对湿度和降雨量)。编译完成后,研究人员使用原始数据对新模型进行训练和验证。为了训练模型,使用了80%的数据,而使用了20%的数据进行验证。提出的模型是使用python编程语言在anaconda中构建的keras顺序分类模型。最优模型有3个隐藏层,分别包含40、30和20个神经元,分别具有Sigmoid和ReLu激活函数。原型模型的仿真准确率为96.67%,拟合良好。本研究表明,人工神经网络模型是预测温暖半干旱气候地区蚊虫流行的有效工具,因此建议使用更多的数据和训练时间来提高模型在现实生活中预测蚊虫流行的准确性和后续实施。
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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