Browse Topic: Optimization

Items (6,811)
Integrating 3D point cloud and image fusion into flying car detection systems is essential for enhancing both safety and operational efficiency. Accurate environmental mapping and obstacle detection enable flying cars to optimize flight paths, mitigate collision risks, and perform effectively in diverse and challenging conditions. The AutoAlignV2 paradigm recently introduced a learnable schema that unifies these data formats for 3D object detection. However, the computational expense of the dynamic attention alignment mechanism poses a significant challenge. To address this, we propose a Lightweight Cross-modal Feature Dynamic Aggregation Module, which utilizes a model-driven feature alignment strategy. This module dynamically realigns heterogeneous features and selectively emphasizes salient aspects within both point cloud and image datasets, enhancing the differentiation between objects and the background and improving detection accuracy. Additionally, we introduce the Lightweight
Feng, XiaoyuZhang, RenhangChu, ZhengWei, LinaBian, ChenDuan, Linshuai
With the rapid advancement of Unmanned Aerial Vehicle (UAV) technology, their assigned missions have become significantly more intricate. Individual UAVs are no longer sufficient to meet these diverse and demanding requirements. There is now a shift towards employing multiple UAVs operating collaboratively to address complex tasks, replacing the reliance on singular units. This study focuses on the complexities of coordinated flight within UAV formations. A dynamic consensus optimal control algorithm is proposed for distributed formations, grounded in optimal control theory. Furthermore, the enhanced control method is validated via simulation on a semi-physical visualization platform, effectively closing the gap between real-world formation requirements and simulation outcomes. The results from these simulations underscore that the proposed method effectively preserves UAV formation integrity and demonstrates exceptional applicability in real-world scenarios
Li, WeiZhou, HanyunShi, JiekaiCheng, WeinanWang, FangBai, Jie
ABSTRACT Today’s combat vehicle designs are largely constrained by traditional manufacturing processes, such as machining, welding, casting, and forging. Recent advancements in 3D-Printing technology offer tremendous potential to provide economical, optimized components by eliminating fundamental process limitations. The ability to re-design suitable components for 3D-printing has potential to significantly reduce cost, weight, and lead-time in a variety of Defense & Aerospace applications. 3D-printing will not completely replace traditional processes, but instead represents a new tool in our toolbox - from both a design and a manufacturing standpoint
Deters, Jason
ABSTRACT The diverse range of military vehicles and operational conditions share a number of powertrain objectives including high fuel efficiency and fuel adaptability to lessen the logistical impact of conflict; low heat rejection to minimize the cooling system losses, vulnerability and powertrain package space; tractive power delivery to provide superior mobility for the vehicle; and light weight to allow for more armor to be used and/or payload to be carried. This paper first provides an overview of the operational powertrain requirements of military vehicles. A review the processes used to integrate powertrain components into an optimized system specifically developed for modern combat vehicle applications is then provided, including an example of how the process was employed to develop an advanced powertrain for a tactical vehicle demonstrator based on military optimized off-the-shelf components. The paper concludes with a summary of some further military specific engine and
Hunter, Gary
Navigating Unmanned Aerial Vehicles (UAVs) in urban airspace poses significant challenges for fast and efficient path planning due to the environment's complexity and dynamism. However, the existing research on UAV path planning has ignored the speed of algorithmic convergence and the smoothness of the generated path, which are critical for adapting to the dynamic changing of the urban airspace as well as for the safety of ground personnel, and the UAV itself. In this study, we propose an enhanced Ant Colony Optimization (ACO) algorithm that incorporates two heuristic functions: the compass heuristic and the inertia heuristic. These functions guide the ant agents in their movement towards the destination, aiming for faster convergence and smoother trajectories. The algorithm is evaluated using a gray-scale lattice map generated from ground personnel risk data in Suzhou City. The results indicate that the improved ACO path planning algorithm demonstrates both efficiency and quality
Wang, BofanZhao, ZhouyeHu, BoyaLiu, YufanRu, XiaoyuTong, ZiyueJia, Qing
The highway diverging area is a crucial zone for highway traffic management. This study proposes an evaluation method for traffic flow operations in the diverging area within an Intelligent and Connected Environment (ICE), where the application of Connected and Automated Vehicles (CAVs) provides essential technical support. The diverging area is first divided into three road sections, and a discrete state transition model is constructed based on the discrete dynamic traffic flow model of these sections to represent traffic flow operations in the diverging area under ICE conditions. Next, an evaluation method for the self-organization degree of traffic flow is developed using the Extended Entropy Chaos Degree (EECD) and the discrete state transition model. Utilizing this evaluation method and the Deep Q-Network (DQN) algorithm, a short-term vehicle behavior optimization method is proposed, which, when applied continuously, leads to a vehicle trajectory optimization method for the
Fang, ZhaodongQian, PinzhengSu, KaichunQian, YuLeng, XiqiaoZhang, Jian
ABSTRACT This paper addresses cross-domain optimization of lean technologies developed through motorsports as applied to military vehicle design. Optimization of performance objectives eliminates the reiterative assessments utilized in standard validation and verification of product development. This paper describes the enhancement of overall vehicle reliability, durability, and performance through utilization of front-loaded design, development, engineering, and prototyping activity. Cross-domain optimization, using a Design of Experiments approach (DOE) and the integration of CAE tools, predictably allows for the efficient and accurate solution of challenges prior to full scale prototype build and, congruently, eliminates the necessity for multiple variants often required throughout many testing phases. This paper illustrates, systematically, the reduction of build phases while introducing a new paradigm for military vehicle design
Bishop, Lynn W.Houghton, Kristian
ABSTRACT Structural optimization efforts for blast mitigation seek to counteract the damaging effects of an impulsive threat on critical components of vehicles and to protect the lives of the crew and occupants. The objective of this investigation is to develop a novel optimization tool that simultaneously accounts for both energy dissipating properties of a shaped hull and the assembly constraints of such a component to the vehicle system. The resulting hull design is shown to reduce the blast loading imparted on the vehicle structure. Component attachment locations are shown to influence the major deformation modes of the target and the final hull design
Tan, HuadeGoetz, JohnTovar, AndrésRenaud, John E.
ABSTRACT Modern electronic control units (ECUs) typically contain many physically based models represented by a complex structure of maps, curves and scalar parameters. The purpose of these models is to monitor or predict engine values that are normally measured by actual sensors. If the model structure is a good representation of the physical system and the parameters are well fitted, such a model can replace the sensor and serve as a virtual sensor to reduce the cost and complexity of the overall system. Virtual sensors are commonly used in the ECU for predicting engine torque, air pressure and flow, emissions, catalyst temperature, and exhaust gas temperatures. To ensure an optimal prediction quality of these models, their parameters need to be calibrated using real measurement data collected, e.g., in the vehicle or in the test cell. Due to the models’ complexity and the high number of parameters, a manual calibration is very time consuming or even impossible. Instead, iterative
Gutjahr, TobiasKleinegraeber, HolgerKruse, Thomas
ABSTRACT The armor research and development community needs a more cost-effective, science-based approach to accelerate development of new alloys (and alloys never intended for ballistic protection) for armor applications, especially lightweight armor applications. Currently, the development and deployment of new armor alloys is based on an expert-based, trial-and-error process, which is both time-consuming and costly. This work demonstrates a systematic research approach to accelerate optimization of the thermomechanical processing (TMP) pathway, yielding optimal microstructure and maximum ballistic performance. Proof-of-principle is being performed on titanium alloy, Ti-10V-2Fe-3Al, and utilizes the Hydrawedge® unit of the Gleeble 3800 System (a servo-hydraulic thermomechanical testing device) to quickly evaluate mechanical properties and simulate rolling schedules on small samples. Resulting mechanical property and microstructure data are utilized in an artificial intelligence (AI
Lillo, ThomasChu, HenryAnderson, JeffreyWalleser, JasonBurguess, Victor
Abstract Line2Line’s patented abradable powder surface coatings are a mechanism by which clearance between mating components is reduced, and the tribological properties of the interacting surfaces can be improved. The following discussion presents the modeling efforts targeting the numerical analysis of abradable powder piston skirt coatings. This study employs the Cylinder-Kit Analysis System for Engines (CASE) by Mid-Michigan Research to model the performance enhancements offered by abradable powder coatings as applied to piston skirts. Two piston models were generated for the purposes of this analysis, one with the post-run stock reference geometry and coating, as supplied by the manufacturer, and the second having the Line2Line post-run coated geometry. The pistons modeled had been installed within two separate Cummins R2.8 L turbo diesel engines, both of which were subject to several hours of runtime. The primary finding of the current study is that the Line2Line abradable powder
Nicklowitz, DanielSchock, HaroldSuman, AndyLowe, JimWood, Ai LeGrande
Related to traditional engineering materials, magnesium alloy-based composites have the potential for automobile applications and exhibit superior specific mechanical behavior. This study aims to synthesize the magnesium alloy (AZ61) composite configured with 0 wt%, 4 wt%, 8 wt%, and 12 wt% of silicon nitride micron particles, developed through a two-step stir-casting process under an argon environment. The synthesized cast AZ61 alloy matrix and its alloy embedded with 4 wt%, 8 wt%, and 12 wt% of Si3N4 are subjected to an abrasive water jet drilling/machining (AJWM) process under varied input sources such as the diameter of the drill (D), transverse speed rate (v), and composition of AZ61 composite sample. Influences of AJWM input sources on metal removal rate (MRR) and surface roughness (Ra) are calculated for identifying the optimum input source factors to attain the best output responses like maximum MRR and minimum Ra via analysis of variant (ANOVA) Taguchi route with L16 design
Venkatesh, R.
ABSTRACT The study describes the development of a plug-in module of the realistic 3D Digital Human Modeling (DHM) tool RAMSIS that is used to optimize product development of military vehicle systems. The use of DHM in product development has been established for years. DHM for the development of military vehicles requires not only the representation of the vehicle occupants, but also the representation of equipment and simulation of the impact of such equipment on the Warfighter. To simulate occupants in military vehicles, whether land or air based, realistically, equipment must become an integral part of the extended human model. Simply attaching CAD-geometry to one manikin’s element is not sufficient. Equipment size needs to be scalable with respect to anthropometry, impact on joint mobility needs to be considered with respect to anatomy. Those aspects must be integrated in posture prediction algorithms to generate objective, reliable and reproducible results to help design engineers
Kuebler, ThorstenWirsching, HansBarnes, David
ABSTRACT The IGVC offers a design experience that is at the very cutting edge of engineering education, with a particular focus in developing engineering control/sensor integration experience for the college student participants. A main challenge area for teams is the proper processing of all the vehicle sensor feeds, optimal integration of the sensor feeds into a world map and the vehicle leveraging that world map to plot a safe course using robust control algorithms. This has been an ongoing challenge throughout the 26 year history of the competition and is a challenge shared with the growing autonomous vehicle industry. High consistency, reliability and redundancy of sensor feeds, accurate sensor fusion and fault-tolerant vehicle controls are critical, as even small misinterpretations can cause catastrophic results, as evidenced by the recent serious vehicle crashes experienced by self-driving companies including Tesla and Uber Optimal control techniques & sensor selection
Kosinski, AndrewIyengar, KiranTarakhovsky, JaneLane, JerryCheok, KaCTheisen, BernieOweis, Sami
ABSTRACT Model Based Systems Engineering (MBSE) has been a dominant methodology for defining and developing complex systems; however, it has not yet been paired with cutting-edge digital engineering transformation. MBSE is constrained to represent a whole system, but lacks other capabilities, such as dynamic simulation and optimization, as well as integration of hardware and software functions. This paper provides the key elements for developing a Smart MBSE (SMBSE) modeling approach that integrates Systems Engineering (SE) functionality with the full suite of other development tools utilized to create today’s complex products. SMBSE connects hardware and software with a set of customer needs, design requirements, program targets, simulations and optimization functionalities. The SMBSE modeling approach is still under development, with significant challenges for building bridges between conventional Systems Engineering methodology, with additional capabilities to reuse, automate
Ayala, AlejandroWeaver, JonathanFuentes, JeniferOchoa, Ruben
ABSTRACT Given the complex nature of systems today, systems engineering’s primary focus is typically consumed with optimizing function and performance. This condition often causes producibility and cost to become an after-thought, leading to late, over budget production. Therefore an objective and relevant method is required to provide real-time feedback to system engineers relative to producibility and confidence that facilitates better systems design and programmatic decisions. This paper will discuss the use of producibility model metrics to score several key design elements for the creation of a single standardized producibility index (PI) to encourage engineers to improve their designs for producibility earlier in the development life-cycle. Additionally monitoring certain analysis activities to gauge the level of accuracy in the producibility model will provide metrics to create a single standardized producibility confidence index (PCI) that can be used to mitigate risk in
Hadley, James R.McCarthy, Daniel J.
ABSTRACT For this particular effort, the U.S. Army Tank Automotive Research Development and Engineering Center (TARDEC) Center for Systems Integration (CSI) was tasked to develop a buoyancy/survivability kit that would serve multiple functions. The underbody kit would meet or surpass current required protection levels. Plus the kit was to ensure that the LAV-25A2 (Light Armored Vehicle) continues to meet the swim requirement. However, the overarching objective is to meet the survivability, ground mobility, and water mobility requirements. Combining the accomplishments in the TARDEC & PM-LAV (Program Manager for the Light Armored Vehicle) survivability program in 2013-2014 with the TARDEC & PM-LAV buoyancy/survivability kit developed in 2015-2016, the overall weight is decreased, water mobility is improved, and survivability is significantly improved. This is a unique challenge as a combination of buoyancy, mine blast, and structural requirement on a ground military vehicle is novel
Capouellez, JamesVunnam, MadanKhatib-Shahidi, BijanTison, NathonLee, In-HoDunbar, PatrickHelsel, FloydKerr, SteveHarowitz, Jack
ABSTRACT As the Army begins to explore the electrification of its ground vehicle fleet, several technologies are of interest to help clear the large hurdle presented by vehicles’ energy needs. Hydrogen fuel cells have potential as a solution to this problem but there are many challenges that need to be addressed, such as hydrogen storage. Siemens LMS Amesim was used to simulate the performance of several wheeled and tracked vehicles in order to evaluate several hydrogen storage methods and materials to determine if they are suitable for military ground vehicle use. Several technologies were found to perform better than the state of the art compressed gas storage, exemplifying that advanced hydrogen storage could enable the electrification of the heaviest ground vehicles in the Army’s fleet. Citation: B. Paczkowski, A. Wiegand, “Model-Based Optimization of Hydrogen Storage for Military Ground Vehicle Applications,” In Proceedings of the Ground Vehicle Systems Engineering and Technology
Paczkowski, BenWiegand, Andrew
Electrohydrodynamic (EHD) technology, noted for its absence of moving mechanical parts and silent operation, has attracted significant interest in plane propulsion. However, its low thrust and efficiency remain key challenges hindering broader adoption. This study investigates methods to enhance the propulsion and efficiency of EHD systems, by examining the electrohydrodynamic flow within a wire-cylinder corona structure through both experimental and numerical approaches. A multi-wire-cylinder positive corona discharge experimental platform was established using 3D printing technology, and measurements of flow velocity, voltage, and current at the cathode outlet were conducted. A two-dimensional simulation model for multi-wire-cylinder positive corona discharge was developed using Navier-Stokes equations and FLUENT user-defined functions (UDF), with the simulation results validated against experimental data. The analysis focused on the effects of varying anode diameters and the
Huang, GuozhaoDong, GuangyuZhou, Yanxiong
Internet of vehicles (IoV) system as a typical application scenario of smart city, trajectory planning is one of the key technologies of the system. However, there are some unstructured spaces such as road shoulders and slopes pose challenges for trajectory planning of connected-automated vehicle (CAV). Therefore, this paper addresses the problem of CAV trajectory planning affected by unstructured space. Firstly, based on cyber-physical system (CPS), the cyber-physical trajectory planning system (CPTPS) framework was built. A high-precision digital twin CAV is established based on the physical properties and geometric constraints of CAV, and the digital model is mapped to cyber space of the CPTPS. In order to further reduce the energy consumption of the CAV during driving and the time spent from the start to the end, a model was established. Further, based on the sand cat swarm hybrid particle swarm optimization algorithm (SCSHPSO), global path planning for connected-automated vehicles
Ma, ShiziMa, ZhitaoShi, YingYang, ZhongkaiLai, DaoyinQi, Zhiguo
ABSTRACT Vehicle design is a complex process requiring interactions and exchange of information among multiple disciplines such as fatigue, strength, propulsion, survivability, safety, thermal management, stealth, maintenance, and manufacturing. Simulation models are employed for assessing and potentially improving a vehicle’s performance in individual technical areas. The vehicle’s characteristics influence the performance in all the different attributes. Challenges arise when designing a vehicle for improving mutually competing objectives, satisfying constraints from multiple engineering disciplines, and determining a single set of values for the vehicle’s characteristics. It is of interest to engage simulation models from the various engineering disciplines in an organized and coordinated manner for determining a design configuration that provides the best possible performance in all disciplines. This paper presents an approach that conducts optimization analysis for a complex
He, JimHart, Christopher G.Vlahopoulos, Nickolas
ABSTRACT The CAMEL program focused on force protection and demonstrated the possibility to protect occupants through higher underbelly blast levels than normally or previously observed. This required a holistic vehicle systems engineering approach to mitigate blast injuries that both optimized existing systems as well as developed new technologies. The result was zero injury to all occupants as assessed by 5th, 50th, and 95th percentile encumbered ATDs during survivability blast testing. Twelve full scale objective-level blast tests were performed on over seventy fully-instrumented ATDs without a single lower-extremity injury. The lower limb protection was provided by an isolated floor system. This system was developed from the ground-up and occupant-out during the CAMEL program. This paper chronicles the CAMEL floor system’s creation, design, testing, and development process
Kwiatkowski, KevinWatson, ChristopherKorson, Chantelle
Aiming at the position and attitude separation control problem of the “X” configuration tiltable quadrotor, an appointed-time prescribed performance anti-disturbance control method is proposed. Firstly, the tiltable quadrotor’s model description and dynamic model are presented, in which the virtual control inputs are defined to solve the non-affine control allocation problem trickly. Then, appointed-time prescribed performance control laws are designed for position and attitude angle control subsystems to guarantee tracking errors’ transient and steady-state performance. Furthermore, fixed-time extended state observers are designed to compensate for the lumped disturbance in velocity and angular rate control subsystems. And the quadratic programming method is used to solve the control allocation problem considering energy optimization. Finally, the simulation results demonstrated the effectiveness of the proposed method
Wu, TiancaiBai, JieWang, FangShi, ZhiguoXingchen, Yue
ABSTRACT A discussion on the utility of physics-based compact thermal models to guide the design, integration, operation and control of thermally sensitive vehicle components is presented. Effective component selection requires honest and accurate representation of the key performance attributes expressed by physics-based models. Parallel developments and lessons learned from the Electronics Industry on component packaging and characterization is discussed. An example application of a physics-based model driven design is presented for an Electrical Energy Dissipater design used on typical hybrid vehicles. Low fidelity models are used early in the design to support system requirements decomposition into discreet design attributes. High fidelity thermal and electromagnetic models are used to explore the design space and to optimize performance metrics. Accurate and robust reduced order thermal models are used for the continuous prognostic, diagnostic monitoring and control of the device
Kassinos, AdonisLippsmeyer, JeffreyWebb, Steven
ABSTRACT Parametric analysis is an essential step in optimizing the performance of any system. In robotic systems, however, its usability is often limited by the lack of complex yet repeatable experiments required to gather meaningful data. We propose using the Robotics Interactive Visualization and Experimentation Toolbox (RIVET) in order to perform parametric analysis of robotic systems
Gonzalez, Juan PabloDodson, WilliamDean, RobertKreafle, GregLacaze, AlbertoSapronov, LeonidChilders, Marshal
ABSTRACT Although bio-inspired legged robots have advantageous mobility, they can be very inefficient. Their intrinsic walking mobility is sometimes outweighed by the inefficiency of their drive-train. Some of these inefficiencies are due to collision losses, but they are also due to suboptimal powering schemes. This paper addresses the powering schemes and seeks to clearly delineate an optimal solution to powering the walking motion of a two-legged or biped walker. We examine a simplified model of locomotion called the “rocket car” to extract the meaningful parameters that affect time and energy cost. Using Pontryagin’s Maximum Principle, we dissect the cost function, the state equation, co-state equation, and control input constraints to describe the optimal control. The result of the paper shows a “bang-off” control, and we describe the “coasting line” between these extremes. It is not possible to find a complete closed-form solution for the problem, and numerical methods, such as
Muench, PaulCheok, Ka C
ABSTRACT The IGVC offers a design experience that is at the very cutting edge of engineering education, with a particular focus in developing engineering control/sensor integration experience for the college student participants. A main challenge area for teams is the proper processing of all the vehicle sensor feeds, optimal integration of the sensor feeds into a world map and the vehicle leveraging that world map to plot a safe course using robust control algorithms. This has been an ongoing challenge throughout the 27 year history of the competition and is a challenge shared with the growing autonomous vehicle industry. High consistency, reliability and redundancy of sensor feeds, accurate sensor fusion and fault-tolerant vehicle controls are critical, as even small misinterpretations can cause catastrophic results, as evidenced by the recent serious vehicle crashes experienced by self-driving companies including Tesla and Uber Optimal control techniques & sensor selection
Kosinski, AndrewIyengar, KiranTarakhovsky, JaneLane, JerryCheok, KaCTheisen, BernieOweis, Sami
ABSTRACT This paper focuses on the application of a novel Additive Molding™ process in the design optimization of a combat vehicle driver’s seat structure. Additive Molding™ is a novel manufacturing process that combines three-dimensional design flexibility of additive manufacturing with a high-volume production rate compression molding process. By combining the lightweighting benefits of topology optimization with the high strength and stiffness of tailored continuous carbon fiber reinforcements, the result is an optimized structure that is lighter than both topology-optimized metal additive manufacturing and traditional composites manufacturing. In this work, a combat vehicle driver’s seatback structure was optimized to evaluate the weight savings when converting the design from a baseline aluminum seat structure to a carbon fiber / polycarbonate structure. The design was optimized to account for mobility loads and a 95-percentile male soldier, and the result was a reduction in
Hart, Robert JPerkins, J. ScottBlinzler, BrinaMiller, PatrickShen, YangDeo, Ankit
ABSTRACT Autonomous vehicles rely on path planning to guide them towards their destination. These paths are susceptible to interruption by impassable hazards detected at the local scale via on-board sensors, and malicious disruption. We define robustness as an additional parameter which can be incorporated into multi-objective optimization functions for path planning. The robustness at any point is the output of a function of the isochrone map at that point for a set travel time. The function calculates the sum of the difference in area between the isochrone map and the isochrone map with an impassable semi-circle hazard inserted in each of the four cardinal directions. We calculate and compare two different Pareto paths which use robustness as an input parameter with different weights. Citation: T. Jonsson Damgaard, M. Rittri, P. Franz, A. Halota “Robust Path Planning in the Battlefield,” In Proceedings of the Ground Vehicle Systems Engineering and Technology Symposium (GVSETS), NDIA
Damgaard, Thomas JonssonRittri, MikaelFranz, PatrickHalota, Anika
ABSTRACT The recent U.S. Army TARDEC’s 30-Year Strategy calls for enhancing their skill set in the “ilities,” especially reliability, since this factor directly impacts more than 58% of life cycle costs, according to a DoD study. To support this initiative, this paper presents technology transfer of Iowa developed Reliability-Based Design Optimization (I-RBDO) software by integrating theories and numerical methods that have been developed over a number of years in collaboration with the Automotive Research Center (ARC), which is funded by the U.S. Army TARDEC. Both the sensitivity-based and sampling-based methods for reliability analysis and design optimization methods are integrated in I-RBDO for broader multidisciplinary applications. I-RBDO has very comprehensive capabilities that include modeling of input distributions for both independent and correlated variables; a variable screening method for high dimensional RBDO problems; statistical analysis; reliability analysis; RBDO; and
Choi, K.K.Gaul, Nicholas J.Song, HyeongjinCho, HyunkyooLamb, DavidGorsich, David
ABSTRACT Shape reconstruction for nondestructive evaluation (NDE) of internal defects in ground vehicle hulls using eddy current probes provides a rationale for determination of when to withdraw vehicles from deployment. This process requires detailed finite element optimization and is computationally intensive. Traditional shared memory parallel systems, however, are prohibitively expensive and have limited central processing units (CPUs), making speedup limited. So parallelization has never been done. However, a CPU that is connected to graphics processing units (GPUs) with effective built-in shared memory provides a new opportunity. We implement the naturally parallel, genetic algorithm (GA) for synthesizing defect shapes on GPUs. Shapes are optimized to match exterior measurements, launching the parallel, executable GA kernel on hundreds of CUDA™ (Compute Unified Device Architecture) threads to establish the efficiencies
Karthik, Victor U.Sivasuthan, SivamayamRahunanthan, ArunasalamJayakumar, ParamsothyThyagarajan, Ravi S.Hoole, S. Ratnajeevan H.
ABSTRACT Often during Product Development, externalities or requirements change, forcing design change. This uncertainty adversely affects program outcome, adding to development time and cost, production cost, and can compromise system performance. We present a development approach that minimizes impacts, by proactively considering the possibility of changes in the externalities and mid-course design changes. The approach considers the set of alternative designs and the burdens of a mid-course change from one design to another in determining the relative value of a specific design through the set-based design methodology. The approach considers and plans parallel (redundant) development of alternative designs with progressive selection of options, including time-versus-cost tradeoffs and the impact change-costs. The approach includes a framework of the development process addressing design and integration lead-times, their relationship to the time-order of design decisions, and the
Rapp, StephenDoerry, NorbertChinnam, RatnaMonplaisir, LeslieMurat, AlperWitus, Gary
ABSTRACT Significant advances in sensing, robotics, and wireless networks have enabled the collaborative utilization of autonomous aerial, ground and underwater vehicles for various applications. However, to successfully harness the benefits of these unmanned ground vehicles (UGVs) in homeland security operations, it is critical to efficiently solve UGV path planning problem which lies at the heart of these operations. Furthermore, in the real-world applications of UGVs, these operations encounter uncertainties such as incomplete information about the target sites, travel times, and the availability of vehicles, sensors, and fuel. This research paper focuses on developing algebraic-based-modeling framework to enable the successful deployment of a team of vehicles while addressing uncertainties in the distance traveled and the availability of UGVs for the mission. Citation: S. Venkatachalam, M. Bansal, J. M. Smereka, “Stochastic Programming Models for Autonomous Ground Vehicles”, In
Venkatachalam, SaravananBansal, ManishSmereka, Jonathon M.
ABSTRACT This paper presents a modeling and simulation framework for tracked vehicles for ride comfort and load prediction analysis. The development began with the identification of the key issues such as formulations, integration schemes and contact (with friction) modeling on which the comparative studies are conducted. Based on the results of the investigations, the framework and process for the modeling and simulation of tracked vehicles are established and appropriate algorithms for contact and friction are developed. To facilitate the modeling and simulation process, a Python-based modeling environment was developed for process automation, design optimization and design of experiment. The developed framework has been successfully applied to the dynamic load predication of a M1A1 based Joint Assault Bridge (JAB). The parameter optimization enabled with the Python-based process automation tool helps improve the design and modification of vehicles for significantly improved fatigue
Song, PeilinMelick, PeteHorchner, James
ABSTRACT Fuel economy improvements were investigated for the FMTV platform considering alternative transmissions and final drive ratio. An FMTV-M1078 with Caterpillar C7 engine and Allison 3700SP transmission was the target vehicle of this study. Experimental data were collected while vehicle was operated over the FTP72 test cycle. Base vehicle data (vehicle weight, coast-down times, etc.) were collected to provide comparison data for establishing the baseline analytical vehicle model. Experimental data were processed to determine road load parameters, engine BSFC map, transmission shift schedule and similar for populating the analytical model. Modeling was performed using GT-Drive. The model was analyzed over the same defined drive cycle used to collect the experimental data. Once the model was correlated to the experimental data, updates were made for the variants in transmission and drive-line parameters to be used in the fuel economy study. The difference between experimental
Van Benschoten, MattNelson, Evan
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