MCYP-DeepNet: Nutrition and Temperature Based Season Wise Multi Crop Yield Prediction Using DeepNet 230 Classifier

Nilesh U Sambhe, Manjusha Deshmukh, L. Ashok Kumar, Sandip Chavan, Nidhi P. Ranjan
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Abstract

A vital source of nutrition and a major contributor to the nation’s economic expansion is agriculture. Due to numerous complex factors such as environment, humidity, soil nutrients, and soil moisture, multi crop yield forecasting was very challenging. Because crop prediction is a complicated process, improving performance is challenging. To address these problems, an advance deep learning model was developed to predict crop types and its yields in a particular soil. A real time data were created, which contain various parameters such as soil nutrition’s, weather, data, seasons and temperature. The created dataset is pre-processed using outlier detection as well as normalization because it contains unwanted rows and columns. After that, the pre-processed data were given as input for the DeepNet230 model to analyze the input parameters like soil nutrition and temperature to predict the multi crop type and its yield quantity. DeepNet230 have the capacity of automatic feature learning and rapid unstructured process, so it provides an efficient prediction performance of crop yield and its types. The performance analysis of crop prediction for the proposed model are 93.7% accuracy, 93.4% recall, 92.8% precision and 92.9% specificity. Then, the performance of yield prediction for the identified crops are 95.5% accuracy, 91.6% recall, 93% precision and 94.2% specificity. In addition, the developed method was compared with several opposing methods for validation. The observed results show that the suggested method performed significantly better in real time due to its improved predictive capabilities.

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MCYP-DeepNet:使用 DeepNet 230 分类器进行基于营养和温度的季节性多作物产量预测
摘要 农业是重要的营养来源,也是国家经济发展的主要贡献者。由于环境、湿度、土壤养分和土壤水分等众多复杂因素,多作物产量预测非常具有挑战性。由于作物预测是一个复杂的过程,因此提高预测性能具有挑战性。为了解决这些问题,我们开发了一种先进的深度学习模型,用于预测特定土壤中的作物类型及其产量。创建的实时数据包含各种参数,如土壤营养、天气、数据、季节和温度。创建的数据集使用离群点检测和归一化进行预处理,因为其中包含不需要的行和列。然后,将预处理后的数据作为 DeepNet230 模型的输入,以分析土壤营养和温度等输入参数,从而预测多种作物类型及其产量。DeepNet230 具有自动特征学习和快速非结构化处理的能力,因此能提供高效的作物产量及其类型预测性能。对所提出模型的作物预测性能分析结果为:准确率 93.7%、召回率 93.4%、精确率 92.8%、特异率 92.9%。对所识别作物的产量预测准确率为 95.5%,召回率为 91.6%,精确率为 93%,特异性为 94.2%。此外,还将所开发的方法与几种对立方法进行了比较验证。观察结果表明,由于建议的方法提高了预测能力,其实时性能明显更好。
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来源期刊
CiteScore
1.50
自引率
11.10%
发文量
25
期刊介绍: The journal covers a wide range of issues in information optics such as optical memory, mechanisms for optical data recording and processing, photosensitive materials, optical, optoelectronic and holographic nanostructures, and many other related topics. Papers on memory systems using holographic and biological structures and concepts of brain operation are also included. The journal pays particular attention to research in the field of neural net systems that may lead to a new generation of computional technologies by endowing them with intelligence.
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