2 research outputs found
AAHES: A hybrid expert system realization of Adaptive Autonomy for smart grid
Abstract--Smart grid expectations objectify the need for
optimizing power distribution systems greater than ever.
Distribution Automation (DA) is an integral part of the SG
solution; however, disregarding human factors in the DA systems
can make it more problematic than beneficial. As a consequence,
Human-Automation Interaction (HAI) theories can be employed
to optimize the DA systems in a human-centered manner. Earlier
we introduced a novel framework for the realization of Adaptive
Autonomy (AA) concept in the power distribution network using
expert systems. This research presents a hybrid expert system for
the realization of AA, using both Artificial Neural Networks
(ANN) and Logistic Regression (LR) models, referred to as
AAHES, respectively. AAHES uses neural networks and logistic
regression as an expert system inference engine. This system
fuses LR and ANN models' outputs which will results in a
progress, comparing to both individual models. The practical list
of environmental conditions and superior experts' judgments are
used as the expert systems database. Since training samples will
affect the expert systems performance, the AAHES is
implemented using six different training sets. Finally, the results
are interpreted in order to find the best training set. As revealed
by the results, the presented AAHES can effectively determine
the proper level of automation for changing the performance
shaping factors of the HAI systems in the smart grid
environment
A CASE REPORT OF WELL DIFFERENTIATED CHONDROSARCOMA OF THYROID GLAND
We report a 75 year - old man who presented with a cervical mass, dysphagia anil hoarseness, CT - xcan of neck showed a large cold nodule in the right lobe of thyroid gland, which was followed by surgical excision and its histopathologic exam revealed well-differentiated chondrosarcoma