لدوال الفازية لاهم المتغيرات المرتبطة بمشروعات تطويرالمجرى الملاحي لقناة السويس

نوع المستند : المقالة الأصلية

المؤلفون

1 معهد الدراسات البحوث الاحصائية - جامعة القاهرة

2 کلية التجارة - جامعة دمياط

3 کلية العلوم - جامعة بورسعيد

المستخلص

Abstract: The research is an attempt to use Fuzzy Regression models in achieving the following objectives: 1- Fuzzy regression model is used to analyze the Suez Canal dues on tankers and to determine the most important factors affecting them and to estimate their effects. 3 مقدمه: يعد أسموب تحميؿ االنحدارAnalysis Regression أحد أىـ األساليب اإلحصائية المستخدمة لقياس العالقات االقتصادية، مف خالؿ قياس حجـ التغير الذي يحدث في متغير ما وىو المتغير التابع Variable Dependent ويطمؽ عميو متغير االستجابو variable Response عندما يتغير متغير آخر وىو المتغير المستقؿ Variable Independent أو Explanatory Variable ويطمؽ عميو نموذج االنحدار البسيط Model Regression Simple أو متغيرات مستقمة أخرى ويطمؽ عميو نموذج االنحدار المتعدد Regression Multiple Model 2- Fuzzy regression model is used to analyze the Suez Canal dues on bulk carriers and to determine the most important factors affecting them and to estimate their effects. 3- Fuzzy regression model is used to analyze the Suez Canal dues and to determine the most important factors affecting them and to estimate their effects. 4- a Fuzzy time series model is used for forecasting the future amount of the tanker's dues. 5- a Fuzzy time series model is used for forecasting the future amount of the bulk carrier dues. 6- a Fuzzy time series model is used for forecasting the future amount of the all dues. 7- a mathematical model-mixed (0-1) Integer programming. 8- Expert Fuzzy System will be used to choose the best alternative for developing the Marin stream of Suez C

الكلمات الرئيسية

الموضوعات الرئيسية


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