基于Web服务的食品添加剂库存管理与预测系统

Pikulkaew Tangtisanon
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引用次数: 10

摘要

近年来,由于新技术的发展,食品工业发展迅速。为了改进产品以满足顾客的需求,我们进行了大量的研究。因此,各种食品添加剂被用来组成产品,这给识别和管理食品添加剂库存带来了困难。为了能够在竞争激烈的世界中生存,该行业必须找到一个实用的库存管理解决方案,因为库存不足会导致该行业失去销售机会,而库存过多会导致赤字。本文研究的是一个库存管理和库存预测系统。Web服务是作为库存管理系统的一种新方法实施的,该系统有助于管理和查找经食品法典委员会授权的国际食品添加剂数据库中存在的食品添加剂。与传统的web基础相比,使用web服务有许多优点。服务提供者不必向客户端透露数据库访问方法,信息或业务模型可以随时更改,不需要更新客户端。客户端可以通过任何平台访问服务。web服务是通过超文本标记语言5 (HTML5), Node JavaScript (NodeJS),我的结构化查询语言(MySQL),数据库管理系统,超文本预处理器(PHP)开发的。利用Python进行库存预测,采用朴素贝叶斯、决策树、线性回归和支持向量回归四种机器学习模型对食品添加剂的库存进行预测。准确度是用来衡量这些技术性能的。实验结果表明,最准确的股票预测模型是线性回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Web Service Based Food Additive Inventory Management with Forecasting System
Recently, food industries have been growing rapidly due to the development of novel technology. Numerous research has been conducted to improve products to satisfy the needs of customers. As a result, various food additives have been used to compose the product and which makes it difficult in recognizing and managing food additive stock. To be able to survive in a competitive world, the industry must find a practical stock management solution since under-stocking causes the industry to lose an opportunity to sell while overstocking causes a deficit. This paper focuses on an inventory management and a stock forecasting system. Web service was implemented as a new approach for an inventory management system that helps to manage and to find the food additives that exist in the international food additive database authorized by Codex Alimentarius Commission. Using web services has many advantages than a traditional web base. The service provider does not have to reveal the database access method to the client, and the information or business model can be changed at any time, and no need to update the client side. The client can access the service via any platform. The web service has been developed through Hypertext Mark up Language 5 (HTML5), Node JavaScript (NodeJS), and My Structured Query Language (MySQL), Database Management System, Hypertext Preprocessor (PHP). The stock forecasting was done by Python with four machine learning models which are Naive Bayes, Decision Tree, Linear Regression and Support Vector Regression to predict stock of food additive. Accuracy is used to measure the performance of these techniques. The experimental result indicated that the most accurate model for stock forecasting is Linear regression.
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