Optimization of Total Production of Refined Sugar From Raw Sugar Raw Materials and Supporting Raw Materials Using the Generate-And-Test Method at PT. DSI Banten

S. Rahayu, Andri Budi Kusumah, S. Supriyadi, W. O. Widyarto
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引用次数: 2

Abstract

The search problem is a problem that is commonly applied to systems based on the concept of Artificial Intelligence. One of the well-known heuristic search methods in Artificial Intelligence terminology is Generate and Test. In general, there are no companies operating without raw materials, raw materials in PT. DSI is a type of main and supporting raw material. Refined sugar production at PT. DSI Banten has been experiencing fluctuations in the output of production every day, the data in April 2014 showed from 1-7 consecutively that is 726, 578, 592, 518, 692, 734, 473 tons (PT. DSI, April 2014 ). The purpose of this study is to implement the heuristic search concept with the Generate and Test Algorithm in the search for a combination of the two raw materials to obtain the highest amount of production / output in the form of refined sugar, from the results of this study obtained a system that is able to find the highest amount of sugar production per cuisine, namely in the form of types of supporting raw materials (Limestone CaO, HCL, NaOH) and types of main raw materials (Raw sugar). After conducting research through the heuristic search concept with the GnT method, from 3 types of supporting raw materials (type 1: supplier from PT. SAP, type 2: supplier from PT. MNA, type 3: supplier from PT. CKT) and 3 types of raw material main (raw sugar 1: import from Australia, raw sugar type 2: import from Vietnam, raw sugar type 3: import from Thailand) found an optimization of the two raw materials with the results of supporting material type "3" and main raw material type " 2 "with the amount of 123 tons per cuisine for refined sugar output, the results obtained are able to increase productivity in the refined sugar processing.
万丹DSI厂以原糖原料及配套原料为原料,用生成-测试法优化精制糖总产量
搜索问题是一个通常应用于基于人工智能概念的系统的问题。人工智能术语中一个著名的启发式搜索方法是生成和测试。一般来说,没有任何公司经营都离不开原材料,原材料中PT、DSI是一类主要和配套的原材料。PT. DSI万腾的精制糖产量每天都在波动,2014年4月的数据显示从1-7连续为726、578、592、518、692、734、473吨(PT. DSI, 2014年4月)。本研究的目的是实现启发式搜索的概念的产生和测试算法在搜索的组合两个原材料获得最高的生产/输出精制糖的形式,从这项研究的结果获得了系统能够找到每菜糖生产的最高金额,即形式的类型的支持原材料(石灰石曹、盐酸、氢氧化钠)和类型的主要原材料(粗糖)。采用GnT方法通过启发式搜索概念进行研究,从3种配套原料(类型1:来自PT. SAP的供应商,类型2:来自PT. MNA的供应商,类型3:来自PT. CKT的供应商)和3种主要原料(原糖1:从澳大利亚进口,原糖2:从越南进口,原糖3:(泰国进口)对两种原料进行了优化,得到了“3”型辅助原料和“2”型主要原料,每道菜的精制糖产量为123吨,从而提高了精制糖加工的生产率。
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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