Fitting firepower score models to the battle of Kursk data

This thesis applies several Firepower Score attrition algorithms to real data. These algorithms are used in highly aggregated combat models to predict attrition and movement rates. The quality of the available historical data for validation of attrition models is poor. Most accessible battle data co...

Full description

Bibliographic Details
Main Author: Gozel, Ramazan
Other Authors: Lucas, Thomas W.
Language:en_US
Published: Monterey, California. Naval Postgraduate School 2013
Online Access:http://hdl.handle.net/10945/26550
id ndltd-nps.edu-oai-calhoun.nps.edu-10945-26550
record_format oai_dc
spelling ndltd-nps.edu-oai-calhoun.nps.edu-10945-265502014-11-27T16:16:22Z Fitting firepower score models to the battle of Kursk data Gozel, Ramazan Lucas, Thomas W. NA NA NA Modeling, Virtual Environments and Simulation [MOVES] This thesis applies several Firepower Score attrition algorithms to real data. These algorithms are used in highly aggregated combat models to predict attrition and movement rates. The quality of the available historical data for validation of attrition models is poor. Most accessible battle data contain only starting sizes and casualties, sometimes only for one side. A detailed database of the Battle of Kursk of World War II, the largest tank battle in history, has recently been developed by Dupuy Institute (TDI). The data is two-sided, time phased (daily), highly detailed, and covers 15 days of the campaign. According to combat engagement intensity, three different data sets are extracted from the Battle of Kursk data. RAND's Situational Force Scoring, Dupuy's QJM and the ATLAS ground attrition algorithms are applied to these data sets. Fitted versus actual personnel and weapon losses are analyzed for the different approaches and data sets. None of the models fits better in all cases. In all of the models and for both sides, the Fighting Combat Unit Data set gives the best fit. All the models tend to overestimates battle casualties, particularly for the Germans 2013-01-23T22:00:22Z 2013-01-23T22:00:22Z 2000-09-01 Thesis http://hdl.handle.net/10945/26550 o640950135 en_US Monterey, California. Naval Postgraduate School
collection NDLTD
language en_US
sources NDLTD
description This thesis applies several Firepower Score attrition algorithms to real data. These algorithms are used in highly aggregated combat models to predict attrition and movement rates. The quality of the available historical data for validation of attrition models is poor. Most accessible battle data contain only starting sizes and casualties, sometimes only for one side. A detailed database of the Battle of Kursk of World War II, the largest tank battle in history, has recently been developed by Dupuy Institute (TDI). The data is two-sided, time phased (daily), highly detailed, and covers 15 days of the campaign. According to combat engagement intensity, three different data sets are extracted from the Battle of Kursk data. RAND's Situational Force Scoring, Dupuy's QJM and the ATLAS ground attrition algorithms are applied to these data sets. Fitted versus actual personnel and weapon losses are analyzed for the different approaches and data sets. None of the models fits better in all cases. In all of the models and for both sides, the Fighting Combat Unit Data set gives the best fit. All the models tend to overestimates battle casualties, particularly for the Germans
author2 Lucas, Thomas W.
author_facet Lucas, Thomas W.
Gozel, Ramazan
author Gozel, Ramazan
spellingShingle Gozel, Ramazan
Fitting firepower score models to the battle of Kursk data
author_sort Gozel, Ramazan
title Fitting firepower score models to the battle of Kursk data
title_short Fitting firepower score models to the battle of Kursk data
title_full Fitting firepower score models to the battle of Kursk data
title_fullStr Fitting firepower score models to the battle of Kursk data
title_full_unstemmed Fitting firepower score models to the battle of Kursk data
title_sort fitting firepower score models to the battle of kursk data
publisher Monterey, California. Naval Postgraduate School
publishDate 2013
url http://hdl.handle.net/10945/26550
work_keys_str_mv AT gozelramazan fittingfirepowerscoremodelstothebattleofkurskdata
_version_ 1716724680781463552