Farrah Payyadhah, B., Siti Salwa, A. G, Noorul Huda, S.
{"title":"Artificial Neural Network in the Development of Halal Cosmetic Formulation Containing Okara","authors":"Farrah Payyadhah, B., Siti Salwa, A. G, Noorul Huda, S.","doi":"10.7187/gjatsi072023-4","DOIUrl":null,"url":null,"abstract":"The development of halal cosmetic formulations presents a challenge to obtain optimised formulations with desirable qualities as it involves many ingredients. The advancement of cosmetic technologies employs multivariate statistical techniques such as artificial neural networks (ANN) to optimise cosmetic formulation, which aims to overcome the shortcomings of traditional formulation methods, which are laborious and cumbersome. Okara is a by-product of the production of soy-based products. Okara has been found to have numerous benefits for many industries and has been discovered as a promising halal cosmetic ingredient. Okara is a plant-derived ingredient; it can be incorporated as a cosmetic ingredient if essential aspects of production are addressed, such as using permissible substances, manufacturing, storage, packaging, and delivery following Shariah requirements. This study aims to develop an optimised halal cosmetic soap formulation containing okara using ANN to achieve the desired hardness of the soap. The influential input variables were the main compositions of the okara soap formulations, containing different fatty acids and oils, and okara through a saponification process. In contrast, the hardness (N) of the soap was the response used as the output. Five different algorithms trained ANN. Generic Algorithm (GA) 6-09-1 was selected as the final optimum model to optimise the halal cosmetic soap formulation. GA modelling was further validated, and the experimentally obtained actual hardness (N) value was close to the predicted value. In conclusion, they were optimised formulating using ANN to produce a soap with desirable properties better than those of commercial ones.","PeriodicalId":12715,"journal":{"name":"global journal al thaqafah","volume":"32 1","pages":""},"PeriodicalIF":0.1000,"publicationDate":"2023-07-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"global journal al thaqafah","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.7187/gjatsi072023-4","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"0","JCRName":"RELIGION","Score":null,"Total":0}
引用次数: 0
Abstract
The development of halal cosmetic formulations presents a challenge to obtain optimised formulations with desirable qualities as it involves many ingredients. The advancement of cosmetic technologies employs multivariate statistical techniques such as artificial neural networks (ANN) to optimise cosmetic formulation, which aims to overcome the shortcomings of traditional formulation methods, which are laborious and cumbersome. Okara is a by-product of the production of soy-based products. Okara has been found to have numerous benefits for many industries and has been discovered as a promising halal cosmetic ingredient. Okara is a plant-derived ingredient; it can be incorporated as a cosmetic ingredient if essential aspects of production are addressed, such as using permissible substances, manufacturing, storage, packaging, and delivery following Shariah requirements. This study aims to develop an optimised halal cosmetic soap formulation containing okara using ANN to achieve the desired hardness of the soap. The influential input variables were the main compositions of the okara soap formulations, containing different fatty acids and oils, and okara through a saponification process. In contrast, the hardness (N) of the soap was the response used as the output. Five different algorithms trained ANN. Generic Algorithm (GA) 6-09-1 was selected as the final optimum model to optimise the halal cosmetic soap formulation. GA modelling was further validated, and the experimentally obtained actual hardness (N) value was close to the predicted value. In conclusion, they were optimised formulating using ANN to produce a soap with desirable properties better than those of commercial ones.
期刊介绍:
Global Journal Al-Thaqafah (GJAT) is a biannual journal, published by Universiti Sultan Azlan Shah (USAS), Perak, MALAYSIA. This journal is purely academic and peer reviewed. It caters to articles, research notes and reports, and book reviews on diverse topics relating to Islam and the Muslims. This journal is intended to provide an avenue for researchers and academics from all persuasions and traditions to share and discuss differing views, new ideas, theories, research outcomes, and socio-cultural and socio-political issues that impact on and directly or indirectly affect the Muslim World with the sole purpose of making this world a better place to live in. GJAT started in 2011 and was later granted the SCOPUS status in March 2014. Since then, GJAT has published numerous articles and materials from international contributors. GJAT welcomes contributions from all: academics, experts, and professionals. All articles submitted must be original, academic, of high scholarly standard, and meet the strict SCOPUS requirements. GJAT prioritizes articles that discuss fundamental issues and are of global relevance and importance, and publishes all articles that fulfill the basic criteria without prejudice (kindly refer to "Submission and Guidelines"). All decisions by GJAT to publish any article are final.