Satellite image data downlink scheduling problem with family attribute:
Model &Algorithm
- URL: http://arxiv.org/abs/2207.01412v1
- Date: Mon, 4 Jul 2022 13:48:58 GMT
- Title: Satellite image data downlink scheduling problem with family attribute:
Model &Algorithm
- Authors: Zhongxiang Chang and Zhongbao Zhou
- Abstract summary: An original image data (OID) formed by one-time observation cannot be completely transmitted in one transmit chance between the EOS and GS.
A bi-stage differential evolutionary algorithm(DE+NSGA-II) is developed holding several bi-stage operators.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The asynchronous development between the observation capability and the
transition capability results in that an original image data (OID) formed by
one-time observation cannot be completely transmitted in one transmit chance
between the EOS and GS (named as a visible time window, VTW). It needs to
segment the OID to several segmented image data (SID) and then transmits them
in several VTWs, which enriches the extension of satellite image data downlink
scheduling problem (SIDSP). We define the novel SIDSP as satellite image data
downlink scheduling problem with family attribute (SIDSPWFA), in which some big
OID is segmented by a fast segmentation operator first, and all SID and other
no-segmented OID is transmitted in the second step. Two optimization
objectives, the image data transmission failure rate (FR) and the segmentation
times (ST), are then designed to formalize SIDSPWFA as a bi-objective discrete
optimization model. Furthermore, a bi-stage differential evolutionary
algorithm(DE+NSGA-II) is developed holding several bi-stage operators.
Extensive simulation instances show the efficiency of models, strategies,
algorithms and operators is analyzed in detail.
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