Publication Date:
1996
abstract:
A parallel algorithm is presented for computing the Correlation Dimension (D_2) from a time series generated by a dynamical system. The algorithm simultaneously gives the various correlation integrals needed to estimate the D_2.
The parallelization is suitable for coarse-grained multiprocessor systems with distributed memory and is accomplished using a master-slave configuration.
Two versions are implemented: the first for a message-passing environment and the second for a virtual shared memory environment.
The algorithm is tested on a homogeneous cluster of workstations, consisting of four DEC Alpha 4/233 (233 MHz), interconnected by Ethernet.
The Parasoft Express tool is used for version one, while version two is implemented using Network Linda. The algorithm is well balanced, gives a linear speed-up and allows efficient computation of D_2, even with a very high number of points.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
nonlinear time series analysis; Correlation Dimension; parallel algorithms; distributed memory multiprocessors; message passing; Virtual Shared Memory; performance evaluation
List of contributors:
Rolando, Claudia; Corana, Angelo
Book title:
Parallel Computing: State-of-the-Art and Perspectives
Published in: