Optimization of pulp and acid leaching operations in zinc ingot production process with the data mining approach

Abstract This study presents a data mining approach to optimize the chemical processes. Typically, these processes are affected by a variety of interactive variables. So, their quality monitoring and detection usually emphasize changing main variables and their interaction effects. Sometimes, the in...

Full description

Bibliographic Details
Main Author: Shahrooz Bamdad
Format: Article
Language:English
Published: Springer 2021-04-01
Series:SN Applied Sciences
Subjects:
Online Access:https://doi.org/10.1007/s42452-021-04484-w
id doaj-c9b2cc735c374bacb92d8ca3f07f331d
record_format Article
spelling doaj-c9b2cc735c374bacb92d8ca3f07f331d2021-04-04T11:19:36ZengSpringerSN Applied Sciences2523-39632523-39712021-04-013511910.1007/s42452-021-04484-wOptimization of pulp and acid leaching operations in zinc ingot production process with the data mining approachShahrooz Bamdad0Department of Industrial Engineering, Islamic Azad UniversityAbstract This study presents a data mining approach to optimize the chemical processes. Typically, these processes are affected by a variety of interactive variables. So, their quality monitoring and detection usually emphasize changing main variables and their interaction effects. Sometimes, the input to the chemical processes lacks access to the raw materials, which causes the manufacturers to use residue instead of high-quality materials. The use of residue has flaws, most notably the low quality of the process output. In this paper, calculating the optimum points of process variables using residue with the data mining approach is suggested. As a real case, one of the operations of the zinc ingot production process, i.e., pulp and acid leaching operations, are studied. In this way, first, by studying the operation in detail, the required data are collected, and key input and output variables are distinguished. Then, by data pre-processing, the optimum points of the process are determined using data mining algorithms. Therefore, the input variable settings of the operation are extracted to optimize the output variables. To validate the results, a set of test data are used to examine the two periods before and after the variable settings. The results show that the operation output is improved significantly. According to the robustness of the proposed method, it can be used as a benchmark for other chemical processes.https://doi.org/10.1007/s42452-021-04484-wChemical processMathematically modelingData mining
collection DOAJ
language English
format Article
sources DOAJ
author Shahrooz Bamdad
spellingShingle Shahrooz Bamdad
Optimization of pulp and acid leaching operations in zinc ingot production process with the data mining approach
SN Applied Sciences
Chemical process
Mathematically modeling
Data mining
author_facet Shahrooz Bamdad
author_sort Shahrooz Bamdad
title Optimization of pulp and acid leaching operations in zinc ingot production process with the data mining approach
title_short Optimization of pulp and acid leaching operations in zinc ingot production process with the data mining approach
title_full Optimization of pulp and acid leaching operations in zinc ingot production process with the data mining approach
title_fullStr Optimization of pulp and acid leaching operations in zinc ingot production process with the data mining approach
title_full_unstemmed Optimization of pulp and acid leaching operations in zinc ingot production process with the data mining approach
title_sort optimization of pulp and acid leaching operations in zinc ingot production process with the data mining approach
publisher Springer
series SN Applied Sciences
issn 2523-3963
2523-3971
publishDate 2021-04-01
description Abstract This study presents a data mining approach to optimize the chemical processes. Typically, these processes are affected by a variety of interactive variables. So, their quality monitoring and detection usually emphasize changing main variables and their interaction effects. Sometimes, the input to the chemical processes lacks access to the raw materials, which causes the manufacturers to use residue instead of high-quality materials. The use of residue has flaws, most notably the low quality of the process output. In this paper, calculating the optimum points of process variables using residue with the data mining approach is suggested. As a real case, one of the operations of the zinc ingot production process, i.e., pulp and acid leaching operations, are studied. In this way, first, by studying the operation in detail, the required data are collected, and key input and output variables are distinguished. Then, by data pre-processing, the optimum points of the process are determined using data mining algorithms. Therefore, the input variable settings of the operation are extracted to optimize the output variables. To validate the results, a set of test data are used to examine the two periods before and after the variable settings. The results show that the operation output is improved significantly. According to the robustness of the proposed method, it can be used as a benchmark for other chemical processes.
topic Chemical process
Mathematically modeling
Data mining
url https://doi.org/10.1007/s42452-021-04484-w
work_keys_str_mv AT shahroozbamdad optimizationofpulpandacidleachingoperationsinzincingotproductionprocesswiththedataminingapproach
_version_ 1721542891223908352