Title :
Learning attributes for situational awareness in the landing of an autonomous airplane
Author_Institution :
Wisconsin Univ., Madison, WI, USA
Abstract :
The paper investigates situational learning, which utilizes mathematics of probability and evidential theory, to determine the perceivable importance of environmental cues as they contribute to situational awareness. The situation-awareness agent´s goal is consistent with that of an aircraft pilot; namely, to land a plane under a variety of weather and runway conditions. Landing requires hypothesis selection which can be formulated as a situational-learning (SL) problem in which sensed states are represented as current situational beliefs. The objective of SL is to learn how to select the optimal set of mutually non-exclusive hypothesis in order to maximize the identification of the situation. Three methodologies for the combination of sensor measurements for situational learning are designed and analyzed for a system equipped with a position measuring device and identification sensors. Using a learning algorithm for searching, the a priori identification probabilities of recognition are known. The methods are: (1) recursive Bayesian where the probability of the current state is based on the a priori information multiplied by the likelihood function, (2) Dempster-Shafer(DS) which uses evidential reasoning/accrual to combine information of uncertainty, and (3) modified Dempster-Shafer(MDS) which uses a combination of evidential reasoning and probability analysis. The methods are assessed for cases with and without feedback
Keywords :
Bayes methods; aerospace computing; aerospace expert systems; aircraft landing guidance; digital simulation; inference mechanisms; learning (artificial intelligence); probability; search problems; sensor fusion; Dempster-Shafer method; IR search and track sensor; a priori identification probabilities; autonomous airplane; belief/probability; electronic support measurement; evidential reasoning; evidential theory; hypothesis selection; identification; identification sensors; learning algorithm; learning attributes; learning-search algorithm; position measuring device; probability; recursive Bayesian method; sensor measurements; simulation; situational awareness; situational learning; wind direction; Aerospace electronics; Aircraft; Airplanes; Algorithm design and analysis; Bayesian methods; Information analysis; Mathematics; Position measurement; Sensor systems; Uncertainty;
Conference_Titel :
Digital Avionics Systems Conference, 1997. 16th DASC., AIAA/IEEE
Conference_Location :
Irvine, CA
Print_ISBN :
0-7803-4150-3
DOI :
10.1109/DASC.1997.635093