Green lean method to identify ecological waste in a nectar factory

IF 1.3 Q3 ENGINEERING, MULTIDISCIPLINARY International Journal of Production Management and Engineering Pub Date : 2023-07-31 DOI:10.4995/ijpme.2023.19598
Andrei Bancovich Erquínigo, Jorge Ortiz Porras, Harold Quintana Saavedra, Paola Crispin Chamorro, Rosiand Manrique Alva, Pedro Vilca Carhuapuma
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Abstract

Nowadays, the waste of resources has become one of the biggest problems for industries, due to the serious environmental, social and economic consequences it generates. Therefore, to ensure a production based on sustainable processes, it’s essential to have a responsible management of resources, being the first step one of the most important ones, the identification. Thus, the present research work aims to develop and implement a method based on the integration of Green and Lean methodologies to systematically identify ecological waste, taking as a case study a nectar factory in Lima - Peru. Through the implementation of tools such as Environmental Value Stream Mapping, Process Mapping or Failure Mode and Effects Analysis, it was found that the company generated a waste of 1584 litres of water and 38.5 kg of conditioned fruit every month. The identification of green waste is vital, as it is the first link in a long chain that contributes directly to improving the company's efficiency, profitability and reputation, as well as protecting the environment and promoting sustainable development.
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用绿色精益法识别花蜜工厂中的生态废物
如今,资源浪费已成为各行各业面临的最大问题之一,因为它会造成严重的环境、社会和经济后果。因此,要确保生产过程的可持续发展,就必须对资源进行负责任的管理,而第一步就是对资源进行识别。因此,本研究工作旨在开发和实施一种基于绿色和精益方法整合的方法,以秘鲁利马的一家花蜜工厂为例,系统地识别生态废物。通过实施环境价值流图、流程图或失效模式和影响分析等工具,发现该公司每月产生 1584 升水和 38.5 千克冷冻水果的浪费。识别绿色废物至关重要,因为它是一长串链条中的第一个环节,直接有助于提高公司的效率、盈利能力和声誉,以及保护环境和促进可持续发展。
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来源期刊
CiteScore
2.10
自引率
13.30%
发文量
18
审稿时长
20 weeks
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