Abstract:
This paper proposes an efficient architecture (InvArch) for computing matrix inversion using Gauss-Jordan Elimination method. The proposed architecture exploits paralleli...Show MoreMetadata
Abstract:
This paper proposes an efficient architecture (InvArch) for computing matrix inversion using Gauss-Jordan Elimination method. The proposed architecture exploits parallelism through pipelined floating-point computational units and reduces the number of floating-point multiplication units required compared with the existing pipelined implementations. The reduction in multiplication units results in over 80% reduction in hardware for floating point computation units. The architecture performs in-place inversion and provides scalability across the rows and columns. Hardware efficiency is achieved by reaping benefit from regularity in computation and better utilization of pipelined computational resources. Multiple rows are normalized within an iteration of Gauss-Jordan algorithm that allows reduction in number of floating-point multiplication units in the elimination step. In addition to implementing the architecture, an analytical performance model is also developed for InvArch and some related works. InvArch achieves performance comparable to reference architectures in terms of clock cycles and throughput while using significantly less hardware resources.
Date of Conference: 18-21 October 2015
Date Added to IEEE Xplore: 17 December 2015
ISBN Information: