A Modelling approach for determining the throughput capacity and energy consumption of a cassava tuber shredder

E. Igboayaka, M. Ndukwu, Innocent Chinedu Ernest
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引用次数: 3

Abstract

AbstractA prediction model for the throughput capacity and energy consumption of cassava tuber-shredder was developed following fundamental principles and iterative steps involved in machine process modelling. The homogeneity of each of the derived model was verified using dimensional analysis, after which, the validation and confirmation of the adequacies of the developed models were performed using six experimental runs. Each model’s prediction accuracy is over 98% with the range of the standard error for the specific energy consumption of the machine found to be −1.48 to 1.49%, while that of throughput of the machine was found to be −1.21 to 1.31% respectively. The result of the verification showed R2 value of 99.86% for the throughput capacity and 99.99% for specific energy consumption. This shows a good fit with a positive linear relationship between the observed and the predicted values for the two parameters predicted. The performance efficiency of the modelled cassava shredder ranged from 84 to 85...
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确定木薯块茎碎纸机的吞吐量和能量消耗的建模方法
摘要根据机器过程建模的基本原理和迭代步骤,建立了木薯碎纸机吞吐量和能耗预测模型。使用量纲分析验证了每个导出模型的同质性,然后使用六次实验运行验证和确认所开发模型的充分性。各模型的预测精度均在98%以上,其中机器比能耗的标准误差范围为- 1.48 ~ 1.49%,机器吞吐量的标准误差范围为- 1.21 ~ 1.31%。验证结果表明,吞吐量R2值为99.86%,比能耗R2值为99.99%。这表明两个参数的观测值和预测值之间具有良好的正线性关系。模拟木薯碎纸机的性能效率在84 ~ 85之间。
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