Decision Support Systems D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Advanced Topics.

Slides:



Advertisements
Similar presentations
1 Chapter 12: Decision-Support Systems for Supply Chain Management CASE: Supply Chain Management Smooths Production Flow Prepared by Hoon Lee Date on 14.
Advertisements

Mgt 240 Lecture Decision Support Systems March 3, 2005.
The Hierarchy of Data Bit (a binary digit): a circuit that is either on or off Byte: 8 bits Character: each byte represents a character; the basic building.
Data Sources Data Warehouse Analysis Results Data visualisation Analytical tools OLAP Data Mining Overview of Business Intelligence Data visualisation.
Marakas: Decision Support Systems, 2nd Edition © 2003, Prentice-Hall Chapter Chapter 1: Introduction to Decision Support Systems Decision Support.
Review 4 Chapters 8, 9, 10.
Lead Black Slide. © 2001 Business & Information Systems 2/e2 Chapter 11 Management Decision Making.
CS2032 DATA WAREHOUSING AND DATA MINING
Building Knowledge-Driven DSS and Mining Data
Eleventh Edition 1 Introduction to Essentials for Information Systems Irwin/McGraw-Hill Copyright © 2002, The McGraw-Hill Companies, Inc. All rights reserved.
Eleventh Edition 1 Introduction to Essentials for Information Systems Irwin/McGraw-Hill Copyright © 2002, The McGraw-Hill Companies, Inc. All rights reserved.
Business Driven Technology Unit 3 Streamlining Business Operations Copyright © 2015 McGraw-Hill Education. All rights reserved. No reproduction or distribution.
MANAGEMENT INFORMATION SYSTEM
A decision support system (DSS) is a computer program application that analyzes business data and presents it so that users can make business decisions.
DASHBOARDS Dashboard provides the managers with exactly the information they need in the correct format at the correct time. BI systems are the foundation.
Designing a Data Warehouse
Mgt 20600: IT Management & Applications Decision Support Systems Tuesday April 18, 2006.
The Academy of Public administration under the President of the Republic of Uzbekistan APPLICATION MODERN INFORMATION AND COMMUNICATION TECHNOLOGY IN DECISION.
MDC Open Information Model West Virginia University CS486 Presentation Feb 18, 2000 Lijian Liu (OIM:
Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization.
Special Topic.  TPS  PCS  ECS  DSS  MIS  EIS.
Data Warehouse & Data Mining
Chapter 5 Lecture 2. Principles of Information Systems2 Objectives Understand Data definition language (DDL) and data dictionary Learn about popular DBMSs.
Ihr Logo Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Turban, Aronson, and Liang.
MGS4020_02.ppt/Jan 22, 2013/Page 1 Georgia State University - Confidential MGS 4020 Business Intelligence Ch 1 – Introduction to DSS Jan 22, 2013.
INFORMATION SYSTEMS Overview
Decision Support System Definition A Decision Support System is an interactive computer-based system or subsystem that helps people use computer communications,
@ ?!.
Decision Support Systems C H A P T E R 10. Decision Making and Problem Solving.
Copyright © 2006, The McGraw-Hill Companies, Inc. All rights reserved. Decision Support Systems Chapter 10.
© 2005 Prentice Hall, Decision Support Systems and Intelligent Systems, 7th Edition, Turban, Aronson, and Liang 5-1 Chapter 5 Business Intelligence: Data.
BUSINESS DRIVEN TECHNOLOGY
Chapter 3 DECISION SUPPORT SYSTEMS CONCEPTS, METHODOLOGIES, AND TECHNOLOGIES: AN OVERVIEW Study sub-sections: , 3.12(p )
Kingdom of Saudi Arabia Ministry of Higher Education Al-Imam Muhammad ibn Saud Islamic University College of Computer and Information Sciences Types of.
Fundamentals of Information Systems, Seventh Edition 1 Chapter 3 Data Centers, and Business Intelligence.
Ihr Logo Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Turban, Aronson, and Liang.
1 Categories of data Operational and very short-term decision making data Current, short-term decision making, related to financial transactions, detailed.
1 Topics about Data Warehouses What is a data warehouse? How does a data warehouse differ from a transaction processing database? What are the characteristics.
Building Data and Document-Driven Decision Support Systems How do managers access and use large databases of historical and external facts?
1 Categories of data Operational and very short-term decision making data Current, short-term decision making, related to financial transactions, detailed.
10-1 Identify the changes taking place in the form and use of decision support in business Identify the role and reporting alternatives of management information.
Chapter 5: Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization DECISION SUPPORT SYSTEMS AND BUSINESS.
McGraw-Hill/Irwin ©2008 The McGraw-Hill Companies, All Rights Reserved CHAPTER 9 DECISION MAKING.
Architecture of Decision Support System
By N.Gopinath AP/CSE. There are 5 categories of Decision support tools, They are; 1. Reporting 2. Managed Query 3. Executive Information Systems 4. OLAP.
IS312: information systems theory and applications LECTURE 3: levels of systems Information Systems Department.
Copyright © 2007 Ramez Elmasri and Shamkant B. Navathe Slide
Chapter 4 Decision Support System & Artificial Intelligence.
Decision Support Systems: An Overview by Dr.S.Sridhar,Ph.D., RACI(Paris),RZFM(Germany),RMR(USA),RIEEEProc. web-site :
Foundations of Information Systems in Business. System ® System  A system is an interrelated set of business procedures used within one business unit.
Information systems and management in business Chapter 7 Using Information Systems in the Management Problems Solving and Decision Making Process.
PowerPoint Presentation by Charlie Cook Copyright © 2004 South-Western. All rights reserved. Chapter 5 Business Intelligence and and Knowledge Management.
 An Information System (IS) is a collection of interrelated components that collect, process, store, and provide as output the information needed to.
1 Categories of data Operational and very short-term decision making data Current, short-term decision making, related to financial transactions, detailed.
Fundamentals of Information Systems, Third Edition 1 Information and Decision Support Systems: Management Information Systems Management information system.
McGraw-Hill/Irwin © The McGraw-Hill Companies, All Rights Reserved CHAPTER 9 Enabling the Organization—Decision Making.
Types of Information Systems Basic Computer Concepts Types of Information Systems  Knowledge-based system  uses knowledge-based techniques that supports.
Learning Objectives Understand the concepts of Information systems.
Search Engine Optimization © HiTech Institute. All rights reserved. Slide 1 Click to edit Master title style What is Business Analysis Body of Knowledge?
Chapter 1 DECISION SUPPORT SYSTEMS AND BUSINESS INTELLIGENCE Skip subsections: 1.1, 1.2, 1.8, 1.10.
CHAPTER 2 Decision Making and Business Processes Opening Case: Information Systems Improve Business Processes at Grocery Gateway Nour El Kadri.
Managing Data Resources File Organization and databases for business information systems.
WEB BASED DSS Aaron Atuhe. KEY CONCEPTS When software vendors propose implementing a Web-Based Decision Support System, they are referring to a computerized.
Decision Support Systems سيستم ‌ هاي تصميم ‌ يار Lecturer: A. Rabiee Rabiee.iauda.ac.ir.
Decision Support Systems
Presentation on Decision support system
Datamining : Refers to extracting or mining knowledge from large amounts of data Applications : Market Analysis Fraud Detection Customer Retention Production.
Data Warehouse.
Decision Support Systems
Chapter 12 Analyzing Semistructured Decision Support Systems
Presentation transcript:

Decision Support Systems D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Advanced Topics

Objectives D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4  To describe decision support tools  To discuss various types of DSS and DSS tools  To discuss DSS in Water Resources  River Basin Planning and Management  Water Quality Management in a River Basin 2

Decision Support System (DSS) D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 DSS is an interactive computer-based system to help decision makers use communications technologies, data, documents, knowledge and/or models to identify and solve problems, complete decision process tasks, and make decisions. Geographic Information Systems (GIS), Enterprise Information Systems (EIS), Expert Systems (ES), On-Line Analytical Processing (OLAP), software agents, knowledge discovery systems and group DSS can all be lumped into the category of systems we call as DSS. 3

DSS for Decision-Making D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Decision Preparation – DSS environments provide data required as input to the decision-making process. – This is what almost all data mart and data warehousing environments do today Decision structuring – DSS environments provide tools and models for arranging the inputs in ways that make sense to frame the decision. – These tools and models are not pivot tables and other aspects of data presentation found in query tools. – They are actual decision-making tools, like fault tree analysis, Bayesian logic and model-based decision-making based on things like neural networks. 4

DSS for Decision-Making… D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4  Context Development  DSS environments again provide tools, and provide the mechanisms for capturing information about a decision's constituencies (who are affected by this decision), outcomes and their probabilities, and other elements of the larger decision-making context.  Decision-making DSS environments may automate all or part of the decision-making process and offer evaluations on the optimal decision. Expert systems and artificial intelligence environments can do this 5

DSS for Decision-Making… D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4  Decision Propagation  DSS environments take the information gathered about constituencies, dependencies, outcomes and drive elements of the decision into those constituencies for action.  Decision Management  DSS environments inspect outcomes days, weeks and months after decisions to see if The decision was implemented/ propagated and If the effects of the decision are as expected 6

DSS for Decision-Making… D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Data flow in a DSS 7

Decision Support Tools D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Multi-Dimensional Analysis Software: Also Known as Multi Software or OLAP (On-Line Analytical Processing) Software that gives the user the opportunity to look at the data from a variety of different dimensions. Query Tools: Software that allows the user to ask questions about patterns or details in the data. Data Mining Tools: Software that automatically searches for significant patterns or correlations in the data. 8

DSS Types D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 1. Model-driven 2. Data-driven 3. Communications-driven 4. Document-driven and 5. Knowledge-driven 9

Model-driven DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 A model driven DSS emphasizes access to and manipulation of financial, optimization and/or simulation models. Model driven DSS use limited data and parameters provided by decision makers to aid them in analyzing a situation. Ex. Sprinter, MEDIAC and Brandaid. 10

Data-driven DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 A data driven DSS emphasizes access to and manipulation of a time series of internal company data and sometimes external and real time data. Simple file systems accessed by query and retrieval tools provide the most elementary level of functionality. Ex. WalMart’s data driven DSS had more than 5 terabytes of online storage. 11

Communications-driven DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Communications driven DSS use network and communications technologies to facilitate decision relevant collaboration and communication. In these systems, communication technologies are the dominant architectural component. Tools used include groupware, video conferencing and computer based bulletin boards. 12

Document-driven DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Document-driven DSS uses computer storage and processing technologies to provide document retrieval and analysis. Large document databases may include scanned documents, hypertext documents, images, sounds and video. Examples of documents that might be accessed by a document-driven DSS are policies and procedures, product specifications, catalogs, and corporate historical documents, including minutes of meetings and correspondence. 13

Knowledge-driven DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Knowledge driven DSS can suggest or recommend actions to managers. These DSS are man machine systems with specialized problem solving expertise. The "expertise" consists of knowledge about a particular domain, understanding of problems within that domain, and "skill" at solving some of these problems Artificial Intelligence (AI) and expert systems have been used for scheduling in reservoir operation and web based advisory systems. In recent years, connecting expert systems technologies to relational databases with web based front ends has broadened the deployment and use of knowledge driven DSS. 14

When to build a DSS ? D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Can the problem be solved effectively by conventional programming? Is the domain well-bounded? Is there a need and a desire for an expert systems? Is there at least one human expert who is willing to cooperate? Can the expert explain the knowledge so that it is understandable by the knowledge engineer? Is the problem-solving knowledge mainly heuristic and uncertain? 15

DSS in Water Resources D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 DSS is extensively used in Hydrology, water resources planning and management and environmental engineering for data analysis and decision making Considerable numbers of DSS were developed for river basin planning and management with number of features and attributes specific to a river basin under consideration. DSS can consider multiple reservoir systems with multiple purposes for optimal operation in real time. 16

Examples of DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Components of DSS for River Basin Planning and Management 17

MODSIM DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 MODSIM (Labadie et al, 2000) is a generic river basin management decision support system developed in Colorado State University, USA. MODSIM is designed for developing Basin-wide strategies for short-term water management, Long-term operational planning, Drought contingency planning, Water rights analysis and Resolving conflicts between urban, irrigation, hydropower and environmental concerns. MODSIM network 18

MODSIM DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Most recent version - MODSIM 8.0 Developed under the MS.NET framework Comprised entirely of native code written in MS Visual C++.NET MODSIM graphical user interface (GUI) is developed in Visual Basic.NET, and includes both native code and software requiring a developer license Advantage of the.NET Framework is providing users with the ability to customize MODSIM for any specialized operating rules, input data, output reports, and access to external models running concurrently with MODSIM, all without having to modify the original MODSIM source code MODSIM data sets can be developed for daily, weekly, and monthly time steps Streamflow routing can be handled through the use of lag coefficients 19

MODSIM DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 There is considerable flexibility in representing consumptive use demands and flow requirements and their associated water rights, including exchanges Reservoir operations include target storage, hydropower, tail water effects, evaporation, and seepage Optimization model in MODSIM provides an efficient means of assuring that all system targets and rule curves are achieved according to user-specified priorities based on water rights or economic valuation Optimization model ensures that water is allocated according to physical, hydrological, and institutional/ legal/ administrative aspects of river basin management. 20

MODSIM DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 A powerful GUI connects MODSIM with database management components and an efficient network flow optimization model. MODSIM GUI 21

DESERT DSS (DEcision Support system for Evaluation of River basin sTrategies) D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 DESERT (Ivanov et al, 1996) is highly integrated tool for decision support for water quality management in a river basin. Computes river hydraulic characteristics, such as depth, cross ‑ sectional area and travel time which is necessary for the simulation of water quality. Hydraulic models used in DESERT for rivers and open channels are based on mass continuity and momentum equations of fluid mechanics. It models river hydraulics through the one-dimensional shallow water equations (Saint Venant’s equations). 22

DESERT DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Components of DESERT 23

DESERT DSS - Features D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4  Integration of most important stages of decision support, namely: data management, model calibration, simulation, optimization and plotting results of simulation.  Friendly user environment based upon Microsoft Windows interface  Unified data formats and data processing  Flexible structure of water quality model  Object oriented programming (C++), easily extended  Several variants of hydraulics  Possibility for on-line linkage to OLE servers, like Microsoft Excel, Lotus 1-2-3, etc  Easy-to-use data handling module with a dBase style database engine  Simulation and calibration of hydraulics and water quality models  Display of computed data with the help of external spreadsheet software; and  Optimization is based on Dynamic Programming algorithm 24

DESERT DSS D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 In this figure arrows indicate the main direction of the flow and roman numerals indicate the order of the reaches. Water quality management problems can be formulated as a search for suitable waste- load allocation policies. Representation of a river system as a binary tree in DESERT 25

Other DSS for River Basin Management D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 HEC-ResSim: Developed by US ACE RiverWare: Developed in Univ. of Colorado, USA WaterWare: Developed in Europe 26

D Nagesh Kumar, IISc Water Resources Planning and Management: M9L4 Thank You 27