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Metode Fuzzy Inferensi System Mamdani Untuk Menentukan Bantuan Modal Usaha Bagi UMKM Ramah Lingkungan

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  • Puryono, Daniel Alfa

Abstract

Government through various programs have attempted to increase the number of SMEs in the country. It is certainly motivated by the fact that Indonesia is still a shortage of entrepreneurs. Deficiencies in the micro business sector is an impact on the high unemployment because of the narrowness of employment so as to make the salaries of workers and employees are not too high. Many ways to determine appropriate criteria to get help entrepreneurial capital, one of which is by using fuzzy logic. This study aims to determine who is eligible to get help on using Mamdani fuzzy inference models or often also known as the min-max method. Analysis and design of the system to get the output is done in several steps: the formation of fuzzy set, Establishment of rules, rules of composition determination, Discernment (defuzzyfication). While the determination of entrepreneurial assistance based on the number of children in responsibility, large monthly income, Age prospective beneficiaries and friendly business environment. Of the report shows the results obtained proved to be better and more natural. We make this system is expected to assist the agency in making more informed decisions and accurately to determine recommendations to the beneficiary entrepreneurs. In addition, in order not to deviations and reduce the risk of corruption (Collection corruptions and nepotism). Because the report is valid and there is no duplication or manipulation of data.

Suggested Citation

  • Puryono, Daniel Alfa, 2014. "Metode Fuzzy Inferensi System Mamdani Untuk Menentukan Bantuan Modal Usaha Bagi UMKM Ramah Lingkungan," OSF Preprints hfb73, Center for Open Science.
  • Handle: RePEc:osf:osfxxx:hfb73
    DOI: 10.31219/osf.io/hfb73
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