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SoilMATTic: Arduino-Based Automated Soil Nutrient and pH Level Analyzer using Digital Image Processing and Artificial Neural Network

机译:土壤硕士:基于Arduino的自动化土壤营养和pH水平分析仪,使用数字图像处理和人工神经网络

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In this study, SoilMATTic was developed for faster and accurate soil analysis compared with conventional method to guide farmers on crop suitability and increase farm productivity and crop yield. The Arduino-based prototype automated the whole process of macronutrient and pH analysis of soil from soil testing procedures up to fertilizer recommendation. It includes stepper motors and pumps to fully automate the chemical reaction of soil with chemical reagent during testing and an on board printer to print out fertilizer recommendations. It uses digital image processing technique to efficiently identify (1) Nitrogen, (2) Phosphorus, (3) Potassium and (4) pH level of Philippine farmlands. The system is composed of five stages namely: automated soil testing, image acquisition, image processing, training system, and recommendation. Artificial Neural Network offered fast and accurate performance for the image processing. The system data base stored and manages 356 captured images where 70% is for training, 15% for testing and 15% for validation. Results of this this study showed 96.67 accuracy in identifying soil macronutrient and pH level and gives fertilizer recommendation for Inbred rice plant, Inbred corn, Tobacco, Sugarcane, Pineapple, Mango, Coconut, Abaca, Coffee, Banana through a generated report in printed form.
机译:在这项研究中,与传统方法相比,为较快和准确的土壤分析开发了陶瓷,以指导农民在作物适用性上,提高农场生产力和作物产量。基于Arduino的原型自动化土壤检测手术的全部方法和PH分析肥料推荐。它包括步进电机和泵,以在测试期间用化学试剂完全自动化土壤的化学反应,并在船上打印机打印出施用施肥。它采用数字图像处理技术有效地鉴定(1)氮,(2)磷,(3)钾和(4)pH水平的菲律宾农田。该系统由五个阶段组成:自动化土壤测试,图像采集,图像处理,培训系统和推荐。人工神经网络为图像处理提供了快速准确的性能。存储的系统数据库和管理356捕获的图像,其中70 %用于训练,15 %用于测试,验证15 %。结果表明,该研究表明了96.67鉴定土壤常规和pH水平的准确性,并为近交水稻,血糖,烟草,甘蔗,菠萝,芒果,椰子,亚马卡,咖啡,香蕉,通过印刷形式的报告给予肥料推荐。

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