Exploring Strategies for Parallel Computing of RS Data Assimilation with SWAP-GA
نویسندگان
چکیده
An agro-hydrological simulation model is useful for agriculture monitoring. One issue in running such model is parameter identification, especially when the target area is large such as provincial or country level. Remote Sensing (RS) provides us with useful information over large area. RS cannot observe input parameters of agro-hydrological models directly. However, a method to estimate input parameters of such model from RS using data assimilation has been proposed by Ines using the SWAP (Soil, Water, Atmosphere and Plant) model. Genetic Algorithm (GA) was used in this optimization process. The combined model of SWAP and GA is called SWAP-GA model. When dealing with sufficiently large and complex processing with RS data, single computers time processing extends to unacceptable limits. It becomes necessary to introduce methods for using higher processing power such as distributed computing. Cluster based computing support both high performance and load balancing parallel or distributed applications. Implementing SWAP-GA in Cluster computers will remove the computational time constraint, with this hypothesis three different parallel SWAP-GA approaches are proposed in this study. Distributed population (where GA will work on distributed manner), Distributed pixel (Pixels are processed in parallel) and Mixed of distributed population and pixel model called Hybrid model. The technical considerations of implementing such methodologies
منابع مشابه
Irrigation Scheduling Using Remote Sensing Data Assimilation Approach
Remote sensing and crop growth models have enhanced our ability to understand soil water balance in irrigated agriculture. However, limited efforts have been made to adopt data assimilation methodologies in these linked models that use stochastic parameter estimation with genetic algorithm (GA) to improve irrigation scheduling. In this study, an innovative irrigation scheduling technique, based...
متن کاملRTDGPS Implementation by Online Prediction of GPS Position Components Error Using GA-ANN Model
If both Reference Station (RS) and navigational device in Differential Global Positioning System (DGPS) receive signals from the same satellite, RS Position Components Error (RPCE) can be used to compensate for navigational device error. This research used hybrid method for RPCE prediction which was collected by a low-cost GPS receiver. It is a combination of Genetic Algorithm (GA) computing an...
متن کاملCloud Computing Technology Algorithms Capabilities in Managing and Processing Big Data in Business Organizations: MapReduce, Hadoop, Parallel Programming
The objective of this study is to verify the importance of the capabilities of cloud computing services in managing and analyzing big data in business organizations because the rapid development in the use of information technology in general and network technology in particular, has led to the trend of many organizations to make their applications available for use via electronic platforms hos...
متن کاملUsing and comparing metaheuristic algorithms for optimizing bidding strategy viewpoint of profit maximization of generators
With the formation of the competitive electricity markets in the world, optimization of bidding strategies has become one of the main discussions in studies related to market designing. Market design is challenged by multiple objectives that need to be satisfied. The solution of those multi-objective problems is searched often over the combined strategy space, and thus requires the simultaneous...
متن کاملGenetic algorithm for assimilating remotely sensed evapotranspiration data using a soil-water-atmosphere-plant
Agricultural monitoring is necessary for efficient food security management at country level. Typically, monitoring requirement from the point of view of an agricultural/irrigation manager would be to “see” each field at a regular interval to which 15 days is reasonable. Evapotranspiration (ETa) is converting the water into crop, and is therefore a crucial indicator of crop productivity. ETa ca...
متن کامل