Composition Model of Organic Waste Raw Materials Image-Based To Obtain Charcoal Briquette Energy Potential

Norbertus Tri Suswanto Saptadi, Ansar Suyuti, Amil Ahmad Ilham, Ingrid Nurtanio
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Abstract

Indonesia needs new renewable energy as an alternative to fuel oil. The existence of organic waste is an opportunity to replace oil because it is renewable and contains relatively less air-polluting sulfur. Previous research that has been widely carried out still utilizes coconut shell raw materials, which are increasingly limited in number, so other alternative raw materials are needed. A model is needed to make a formulation that can optimize the composition of organic waste raw materials as a basic ingredient for making briquettes. The research objective was to determine the best raw material composition based on digital image analysis in processing organic waste into briquettes. An artificial intelligence approach with a Convolutional Neural Network (CNN) architecture can predict an effective object detection model. The image analysis results have shown an effective model in the raw material composition of 60% coconut, 20% wood, and 20% adhesive to produce quality biomass briquettes. Briquettes with a higher percentage of coconut will perform better in composition tests than mixed briquettes. The energy obtained from burning briquettes is useful for meeting household fuel needs and meeting micro, small, and medium business industries.
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基于图像的有机废弃物原料组成模型获取木炭型煤能量势
印尼需要新的可再生能源作为燃料油的替代品。有机废物的存在是一个替代石油的机会,因为它是可再生的,并且含有相对较少的污染空气的硫。以往广泛开展的研究仍然采用椰子壳原料,数量越来越有限,因此需要其他替代原料。需要一个模型来制定一个配方,可以优化有机废物原料的组成,作为制造成型煤的基本成分。研究目的是基于数字图像分析确定有机废物制煤过程中最佳原料组成。采用卷积神经网络(CNN)架构的人工智能方法可以预测有效的目标检测模型。图像分析结果表明,以60%的椰子、20%的木材和20%的粘合剂为原料组成生产优质生物质型煤的有效模型。椰子含量较高的型煤在成分测试中的表现优于混合型煤。从燃烧型煤中获得的能量对满足家庭燃料需求和满足微型、小型和中型商业工业是有用的。
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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