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ACM TOMACS Detailed Area Descriptions

Advanced Applications
David Nicol, Area Editor

The Subject Area of Advanced Applications is intended to cover topics that arise when constructing simulations of complex applications such as computer systems, communication systems, manufacturing systems, health care systems, and transportation systems (this list is representative, not exhaustive. Other types of systems are of interest). It is frequently the case that problem characteristics specific to an application can be exploited to enhance the size, complexity, or speed of a simulation. For instance, direct-execution simulation accelerates computer cache simulations; fluid-flow models accelerate network simulations. We solicit submissions that develop novel simulation techniques, that report on tools embodying novel techniques, and that analyze the performance benefits accrued by advanced methods.


Distributed Simulation
Paul Reynolds, Area Editor

Distributed interactive simulation is concerned with the interoperation of diverse, geographically distributed simulations, often operating with real-time constraints and with humans, hardware, and software in the loop. It is used extensively for training, test and evaluation, and engineering analysis. Requirements for distributed simulation, in contrast with those for parallel simulation, often place more emphasis on consistency and coherency than on high performance. The United States Department of Defense (Dod) is the prime mover in developing technology to support distributed simulations. To date, two major DoD approaches have matured: Distributed Interactive Simulation Protocol (DIS) and Aggregate Level Simulation Protocol (ALSP). Currently, there is a DoD effort to establish a common technical framework which includes a common semantic model, data standards, and a distributed simulation architecture: the DoD High Level Architecture. Fundamental research issues abound, including challenges relating to time management, variable resolution modeling, semantic models, communications and computational latency management, interoperability, object management and sharing, data visualization, system survivability, multi-level security and software reuse. These challenges are by no means unique to DoD-related activities: they apply as well to modeling and simulation in the natural and physical sciences, engineering, socio-economics and the humanities. Extending distributed simulation technology outside of DoD has begun in the areas of emergency management and air traffic control.


Model Execution
Richard Fujimoto, Area Editor

The model execution area handles manuscripts dealing with advances concerning the EXECUTION of discrete event simulation programs on digital computers. This includes execution on sequential, parallel (multiprocessor and multicomputers), and distributed (LAN-based and WAN-based) computing systems. Papers concerning novel techniques and algorithms for executing simulations (e.g., to improve runtime efficiency), analyses of existing techniques and algorithms, and methodologies for execution on parallel and distributed systems whose central contribution concerns the relationship with the simulation execution mechanism are appropriate for this area. Other aspects of simulation model development may also be relevant to this area, if the central contribution relates to model execution (e.g., simulation languages for execution on multiprocessor computers). A major emphasis of this area is papers concerning PARALLEL or DISTRIBUTED execution of simulation programs.


Modeling Methodology
Paul Fishwick, Area Editor

This area focuses on the creation and manipulation of models over the lifetime of the system study. Conceptual models represent non- executable models which serve to organize static and dynamic system components, whereas executable models are of the following types: declarative (such as automata and event graphs); functional (such as queuing models and control engineering diagrams); constraint (such as equations); spatial (such as PDEs and cellular automata); and multimodel (integrating more than one model type). Models are created in deductive or inductive approaches. The deductive approach suggests model creation from earlier models or specifications. Inductive techniques include system identification and parameter estimation. Current areas of interest to modeling methodology include --but are not limited to-- new modeling techniques; model engineering approaches; object-oriented modeling methodology; hybrid and hierarchical modeling; metamodeling; model theory and visual modeling.


Random numbers and objects: modeling and generation
Pierre L'Ecuyer, Area Editor

This area covers all aspects of the generation, analysis and modeling of random, or pseudorandom, phenomena for use in simulation models. Specific topics of interest are random number generators, random number testing, low-discrepancy sequences, random variate transformations, stochastic process and random object generators, statistical distribution fitting, data modeling and correlated sequences.


Simulation Analysis
Paul Glasserman, Area Editor

The Simulation Analysis area seeks to publish high-quality papers analyzing simulation methodology. Topics of particular relevance are output analysis, simulation-based optimization, variance reduction techniques, Markov chain Monte Carlo, and the interface of simulation, random search, and global optimization. A paper's contribution may lie in the development of a new technique, in advancing underlying theory, or in a novel application of an existing technique. Recent papers in this area have addressed, for example, the study of initialization bias through regenerative process theory, the application of importance sampling to telecommunications problems, interactions between metamodel estimation and variance reduction, gradient estimation, and optimal selection. Papers making substantive theoretical contributions or addressing important applications are particularly welcome.


Verification, Validation, and Accreditation (VV&A)
Osman Balci, Area Editor

This area of TOMACS covers the assessment of accuracy of simulation models. The accuracy is assessed through a variety of activities such as verification, validation, and accreditation. Verification deals with substantiating that a model is transformed from one form into another, as intended, with sufficient accuracy. Validation deals with substantiating that a model, within its domain of applicability, behaves with satisfactory accuracy consistent with the study objectives. Accreditation deals with the official determination of model credibility. Verification, validation, or accreditation is conducted by performing testing.