تطوير نظام ترسية العطاءات على مقاولى التشييد فى قطاع غزة باستخدام شبكات الاعصاب الاصطناعية pdf

تفاصيل الدراسة

تطوير نظام ترسية العطاءات على مقاولى التشييد فى قطاع غزة باستخدام شبكات الاعصاب الاصطناعية pdf
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تطوير نظام ترسية العطاءات على مقاولى التشييد فى قطاع غزة باستخدام شبكات الاعصاب الاصطناعية pdf

ملخص الدراسة:

The purpose of this paper is to develop a model for selecting the best contractor in the Gaza Strip using the Artificial_x000D__x000D_
Neural Network (ANN). The contractor’s selection methods and criteria were identified using a field survey. Fifty four engineers_x000D__x000D_
were asked to fill a questionnaire that covers factors related to the selection criteria of contractors practiced in Gaza Strip. The_x000D__x000D_
results shows that the dominant part of respondents (91%) confirmed that the current awarding method "the lowest bid price" is_x000D__x000D_
considered one of the major problems of the construction sector, "award the bid to the highest weight after combination of the_x000D__x000D_
technical and financial scores" represented 50% of the respondents. The criteria weights were determined based on Relative_x000D__x000D_
Importance Index (RII . Ninety-one tenders(13 projects) were used to train and test the ANN model after re-evaluating the_x000D__x000D_
contractors depend on the weights of factors to select the best contractor who achieves the highest score. Neurosolution software_x000D__x000D_
was used to train the models. The results of the trained models indicated that neural network reasonably succeeded in selection the_x000D__x000D_
best contractor with 95.96% accuracy. The performed sensitivity analysis showed that the profitability and capital of company are_x000D__x000D_
the most influential parameters in selection contractors. This model gives chance to the owner to be more accurate in selecting the_x000D__x000D_
most appropriate contractor.

توثيق المرجعي (APA)

El-Sawalhi, Nabil I.,& Abu Hajar, Yousef J H (2016). Development of Awarding System for Construction Contractors in Gaza Strip Using Artificial Neural Network (ANN). Journal of Construction Engineering and Project Management, Vol. 6, No. 3, Korean Institute of Construction Engineering and Management. 27157

خصائص الدراسة

  • المؤلف

    El-Sawalhi, Nabil I.

    Abu Hajar, Yousef J H

  • سنة النشر

    2016-09-01

  • الناشر:

    Korean Institute of Construction Engineering and Management

  • المصدر:

    المستودع الرقمي للجامعة الإسلامية بغزة

  • نوع المحتوى:

    Journal Article

  • اللغة:

    English

  • محكمة:

    نعم

  • الدولة:

    فلسطين

  • النص:

    دراسة كاملة

  • نوع الملف:

    pdf

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