݌ሺܟ|߱ሻൌ൬ߚ

exp ൬െߚ

2 ܟܟ൰

(3.58)

s

߱ሻൌ൬ߴ

ଵ/ଶ

exp ൬െߴ

2 ߙ൰ቀ߬

ଵ/ଶ

exp ቀെ߬

2 ߚ

(3.59)

ative logarithm of thus leads to

1

2 ൜ߙሺ܁ܟെܡሻሺ܁ܟെܡሻ൅ߚܟܟ൅ߴߙ൅߬ߚ

െܰlogα െܭlogߚെlogߴെlog߬

(3.60)

maximum a posteriori procedure is used to estimate parameters for

BBFNN [Yang, 2005b]. The parameters are updated in a loop

initialised values for w, ߴ and ߬. The parameters ߙ and ߚ are

d at first. The estimate of ߙ is shown below, where e is an error

tween a model output vector ܡො and a target vector y,

ߙെ܍൅√܍൅8ߴܰ

(3.61)

stimate of ߚ is shown below,

ߚൌെܟܟ൅ඥሺܟܟሻ൅8߬ܭ

(3.62)

ߙ and ߚ have been estimated, w is estimated using the following

ܟ= ߙሺߙ܁܁൅ߚ۷ሻିଵ܁ܡ

(3.63)

wards, the hyper parameters are also updated as below,