Title :
Performance evaluation of multi core systems for high throughput medical applications involving model predictive control
Author :
Pore, Madhurima ; Banerjee, Ayan ; Gupta, Sandeep K. S.
Author_Institution :
Impact Lab., Arizona State Univ., Tempe, AZ, USA
Abstract :
Many medical control devices used in case of critical patients have model predictive controllers (MPC). MPC estimate the drug level in the parts of patients body based on their human physiology model to either alarm the medical authority or change the drug infusion rate. This model prediction has to be completed before the drug infusion rate is changed i.e. every few seconds. Instead of mathematical models like the Pharmacokinetic models more accurate models such as spatio-temporal drug diffusion can be used for improving the prediction and prevention of drug overshoot and undershoot. However, these models require high computation capability of platforms like recent many core GPUs or Intel Xeon Phi (MIC) or IntelCore i7. This work explores thread level and data level parallelism and computation versus communication times of such different model predictive applications used in multiple patient monitoring in hospital data centers exploiting the many core platforms for maximizing the throughput (i.e. patients monitored simultaneously). We also study the energy and performance of these applications to evaluate them for architecture suitability. We show that given a set of MPC applications, mapping on heterogeneous platforms can give performance improvement and energy savings.
Keywords :
drug delivery systems; drugs; medical computing; medical control systems; multiprocessing systems; predictive control; Intel Xeon Phi; IntelCore i7; MIC; MPC applications; Pharmacokinetic models; architecture suitability; critical patients; drug infusion rate; drug level; drug overshoot; energy savings; heterogeneous platforms; high throughput medical applications; hospital data centers; human physiology model; many core GPU; many core platforms; mathematical models; medical authority; medical control devices; model prediction; model predictive controllers; multicore systems; multiple patient monitoring; patients body; performance evaluation; spatio-temporal drug diffusion; Biomedical monitoring; Computational modeling; Drugs; Graphics processing units; Mathematical model; Parallel processing; Predictive models;
Conference_Titel :
High Performance Computing (HiPC), 2014 21st International Conference on
Print_ISBN :
978-1-4799-5975-4
DOI :
10.1109/HiPC.2014.7116884