Situation awareness systems must process information from various platforms, and distribute it to participating units through communication links. Such systems are improtant for effective monitoring, assessment, and mission planning. Due to the large volume of situation awareness data transmitted over the communication links, it is essential to converse bandwidth. In Phase I, considerable bandwidth saving was demonstrated using simulated and recorded test data, by implementing two predictive error encoding algorighms (Linear Adaptive and Linear Regression) which do not require transmission of target position updates at all times. This proposal for Phase II seeks to extend these algorithms by introducing more realistic communication channels that will include time delay, channel noise, asynchronous transmission, etc. In order to demonstrate the level of maturity and proof of marketability, this software will be tested for a wide range of scenarios using simulated GPS data. This software will also be integrated with Commander's Decision Aid, Distributed Fact Base, and Route Checker. Such software will provide a synchronization matrix of tasks and schedule of key actions as wella s graphical overlays including assembly areas, unit boundaries, routes, phase lines, etc. Extent of bandwidth conservation will be determined by testing the software with the System Performance Model.
Keywords: Situational Awareness; Bandwidth Conservation; Predictive Error Encoding; Surveillance; Kalman Filte