Optimizing Supply Chain Distribution using Cloud based Autonomous Information

The volume of the data and information traffic generated in warehouse management operations is extremely high. They are driven by such frequent events as attempts to locate inventory status files, associated inventory location and integration of specific customer order status tables (such as order payment, and order fulfillment status). The information technology infrastructure required to handle large data volume is expensive with additional cost for complex operations, limiting the operations of small businesses. In addition, any compromise with the infrastructure design may have further implications on the data storage and retrieval affecting productivity. In this research, we seek to investigate the feasibility of a Cloud-based warehouse management system (WMS) that continuously and autonomously captures “RFID” tagged inventory and distributes data handling processes. The purpose of this research paper is to investigate a RFID based WMS (R-WMS) application for mobile devices, including smart phones (such as iPhone, Android, Microsoft Mobile Phone, HTC smart phone, Blackberry, etc) and other handhold smart devices (such as iPad and some light/portable TabletPC) exchanging real-time information through the cloud which is being used to make near optimal decisions and send information back in an acceptable time period. In order to research these possibilities, there is a need to investigate the capacity and dynamic adjustment of workloads for reducing costs and saving energy. Further development of a mobile application of such data intensive operations necessitates exclusive multiple regression data manipulating techniques to provide the most critical information for decision makers. The broader impact of this research paper is the enhancement of mobile user capabilities driving improved productivity. This research will also add to the development of novel warehouse management techniques impacting world-wide business operations helping to realize the world is flatter than anticipated. Further, this multi-disciplinary research will enhance the Computer Science, Industrial and Systems Engineering curriculums by providing greater exposure to emerging areas in supply chain management, mobile computing, operations research, and cloud architecture and computing. The intellectual merit from this research will include ramifications on cloud-based mobile computing, which is the future of modern business operations. This research will train undergraduate and graduate students from both computer science and industrial engineering in the field of supply chain, logistics, mobile computing, and cloud computing. Keywords— RFID WMS, Mobile applications; Cloud Computing;

[1]  Kees Jan Roodbergen,et al.  Design and control of warehouse order picking: A literature review , 2006, Eur. J. Oper. Res..

[2]  Erick C. Jones,et al.  Utilizing pipeline quality and facility sustainability to optimize crude oil supply chains , 2013 .

[3]  Ayman Abdallah,et al.  A DECISION SUPPORT SYSTEM FOR MANUFACTURED HOUSING PRODUCTION PROCESS PLANNING AND FACILITY LAYOUT , 2003 .

[4]  Michael H. Kutner Applied Linear Statistical Models , 1974 .

[5]  Seonggun Kim,et al.  Distributed execution for resource-constrained mobile consumer devices , 2009, IEEE Transactions on Consumer Electronics.

[6]  Yung-Hsiang Lu,et al.  Cloud Computing for Mobile Users , 2011 .

[7]  Randy H. Katz,et al.  Improving MapReduce Performance in Heterogeneous Environments , 2008, OSDI.

[8]  Jason Flinn,et al.  Slingshot: deploying stateful services in wireless hotspots , 2005, MobiSys '05.

[9]  Cheng Wang,et al.  Computation offloading to save energy on handheld devices: a partition scheme , 2001, CASES '01.

[10]  Rupak Biswas,et al.  High performance computing using MPI and OpenMP on multi-core parallel systems , 2011, Parallel Comput..

[11]  Paramvir Bahl,et al.  The Case for VM-Based Cloudlets in Mobile Computing , 2009, IEEE Pervasive Computing.

[12]  M. J. Shaikh,et al.  IT Revolutionizing the Supply chain Transformation: A Case Study of Unilever Pakistan Ltd. , 2013 .

[13]  Russell D. Meller,et al.  Assembly system facility design , 2006 .

[14]  V. Barnett,et al.  Applied Linear Statistical Models , 1975 .

[15]  Sape J. Mullender,et al.  Protium, an infrastructure for partitioned applications , 2001, Proceedings Eighth Workshop on Hot Topics in Operating Systems.

[16]  Barbara M. Chapman,et al.  Enabling locality-aware computations in OpenMP , 2010, Sci. Program..

[17]  Mahadev Satyanarayanan,et al.  Tactics-based remote execution for mobile computing , 2003, MobiSys '03.

[18]  Zulkifli Mohamed Udin,et al.  Dynamic Supply Chain Capabilities: A Case Study in Oil and Gas Industry , 2014 .

[19]  Jukka K. Nurminen,et al.  Energy Efficiency of Mobile Clients in Cloud Computing , 2010, HotCloud.

[20]  Lei Huang,et al.  Unified Parallel C for GPU Clusters: Language Extensions and Compiler Implementation , 2010, LCPC.

[21]  Mahadev Satyanarayanan,et al.  Balancing performance, energy, and quality in pervasive computing , 2002, Proceedings 22nd International Conference on Distributed Computing Systems.

[22]  John B. Kaneene,et al.  An explanation of the use of principal-components analysis to detect and correct for multicollinearity , 1992 .

[23]  Fabrizio Dallari,et al.  Design of order picking system , 2009 .

[24]  Mervyn G. Marasinghe A Multistage Procedure for Detecting Several Outliers in Linear Regression , 1985 .

[25]  Byung-Gon Chun,et al.  Augmented Smartphone Applications Through Clone Cloud Execution , 2009, HotOS.

[26]  Cheng Wang,et al.  Parametric analysis for adaptive computation offloading , 2004, PLDI '04.

[27]  Mahadev Satyanarayanan,et al.  The case for cyber foraging , 2002, EW 10.

[28]  Edward H. Frazelle,et al.  World-Class Warehousing and Material Handling , 2001 .