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&$ :4-9 Probabiliy Se 5 Se Se Se 5 se 6 P.5633.35.767676.69693.69693 P.4657.67975.474969.563357.563357 P.4488.37756.66758 9.6E- 9.6E- P 3.8539.7873.693 8.73E- 8.73E- P 4 9.34E-.897737 8.5E- 7.94E- 7.94E- P 5 7.9E- 7.3E- 7.8E- 7.E- 7.E- P 6 6.6E- 5.59E- 5.9E- 6.56E- 6.56E- P 7 5.4E- 4.33E- 4.9E- 5.96E- 5.96E- P8 4.38E- 3.3E- 4.8E- 5.4E- 5.4E- P9 3.5E-.5E- 3.4E- 4.93E- 4.9E- P.76E-.87E-.83E- 4.48E- 4.48E- P.6E-.39E-.35E- 4.7E- 4.7E- P.69E-.3E-.96E- 3.7E- 3.7E- P3.33E- 7.69E-3.63E- 3.37E- 3.37E- P4.8E- 5.85E-3.36E- 3.6E- 3.6E- P5 9.E-3 4.6E-3.3E-.78E-.78E- %" '-&$ 3!7G-G!3 G # '.U?& U'-# /&$ 3- ".>;#U7T>;#N#C!.<&! 3$ 3 U? :4-9 ;% U?!& 5&!.!H5" K &$ $%! M / M //5/ GD/ /C>
P / / N P j / j P j,,..., N />3 ;%!&U?!:4-39 3& ;% U?:4-39 M / M //5/ GD/ 3$ Probabiliy Numerics Soluion Analyics Soluion Absolue Difference P.696.698 E-6 P.5633.5634 E-6 P.963.963 P 3.873.873 P 4.79463.79364 9.9E-5 P 5.749.749 P 6.65655.6559 6.5E-5 P 7.5966.5967 3.5E-5 P 8.547.547 E-5 P 9.4978.4979 E-6 P.44899.44799. P.477.476 4.6E-5 P.37.374.E-5 P 3.33758.33658. P 4.3698.3598 E-4 P 5.786.786
Recommendaions and Conclusions Conclusions 5. U? #C? >;#N#> 4G$!&-!$";%! /C>5!.<' --$!.$%>3$3!*. /;%, Recommendaions /&& 33!#T&& -<' 453%>*.!.8'%-4% /$.3$ @>%-'.$&$%5 /
References -Al-Hanbali.A.7 Absorbing rocesses: hase ye disribuion sochasic and oeraions research grou, universiy of wene. - Chevalier, J-Chr. Van den Schrieck May 6 Aroximaing he Performance of Call Ceners wih Queues using Loss Models. 3-Dakheel,F.I996, An Aroach For Deerming The Analyical Soluion The machine Inerferance model E k /E L /m/n College Of Educaion, Al-Musansiriayah Universiy. 4-Hermanns.H. and PieerKaoen.J. Auomaed comosiional markov chain generaion 5-John H.& Kuris D.999 Numerical Mehods Using malab 3 rd Ediion,Prenice Hall.Inc.Simon &Schuser Aviacom Comany. 6-Taha, Hamdy A.997 Oeraions Research An Inroducion,6 h ediion,prenice Hall.Inc.Simon &Schuser Aviacom Comany. 7-Winson.L.Wayle 994 Oeraions Research Alicaions and Algorihms Inernaional Thomson Publishing.