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The free-piston engine is an innovative type of internal combustion engine, which has great potential in structural flexibility and energy diversity. The power density and combustion efficiency of the free-piston engine are primarily affected by the scavenging process. The computational fluid dynamics method is used to optimize the scavenging process of a two-stroke free-piston engine, which features a dual-cylinder opposed structure and is equipped with an electromagnetic valvetrain. The valve timing and port inclination angle are optimized by utilizing the scavenging efficiency and circulation intake mass as the main evaluation indicators. The results indicate that the short-circuit loss in the loop scavenging mode is relatively severe, which leads to a low trapping efficiency of only about 40%. By modifying the valve timing, a better scavenging performance can be achieved with a higher scavenging efficiency and a larger circulation intake mass, with the scavenging efficiency
Xu, ZhaopingWang, XiaoyanLiu, Liang
This research evaluated the practicality of implementing Post-Quantum Cryptography (PQC) algorithms onboard resource-constrained computing devices, especially those found in automotive platforms. While computational efficiency within PQC is high, memory size and bandwidth constraints become relevant upon consideration of end-to-end implementation. The Controller Area Network (CAN) protocol utilizes only eight (8) bytes of data payload per message, requiring the large keys of PQC algorithms to be split into several messages. Power efficient 32-bit ARM microcontrollers were used for testing. Comparison was made between software implementations of both PQC and modern algorithms to evaluate relative computational cost. Ultimately, this research determined that the communication overhead required by PQC algorithms such as CRYSTALS-Kyber, CRYSTALS-Dilithium, and Falcon is not so egregious as to preclude them from implementation on board vehicular networks.
Smith, SethOwens, KyleKozan, Katherine
Data security remains an issue of the utmost concern in contested environments. Mechanisms such as data encryption, beam-forming antennas, and frequency-hopping radio have emerged to mitigate some of the concerns in radio-frequency (RF) communications, but they do not remove all risk. Consequently, there is still a consistent appetite for alternative solutions. This paper presents a case for the use of the free-space optical (FSO) communications technology ImpLi-Fi as one such alternative. FSO communication is promising because of the ease with which the signal beam may be steered and limited, making detection and interception more difficult than with RF, and ImpLi-Fi in particular is desirable for its exceptional outdoor performance and ease of integration into existing light sources. The paper briefly illustrates the origins of the contested logistics (CL) problem and CL use cases for secure communication channels, before describing the ImpLi-Fi technology in some detail; exploring
Brzozowski, AaronReimann, JethroLakshmanan, SridharMarrero, Pedro “Pete”Moyer, Benjamin D.
The early stages of product planning and concepting in advanced engineering domains are often hampered by high uncertainty, fragmented decision-making, and unstructured data. Traditional planning methodologies routinely lead to misalignment, inefficient risk assessments, and suboptimal product strategies. To address these challenges, we propose an AI-agentic decision intelligence (DI) framework that leverages Large Language Models (LLMs) to enhance decision-making in product planning and concept development. The proposed framework uses the transformative natural language processing capabilities and comprehensive knowledge of LLMs to capture and refine stakeholder intent, improve stakeholder engagement, and optimize workflow orchestration. Implementation of the framework is facilitated by state-of-the-art and rapidly evolving open-source tools, ensuring scalability and readiness for corporate environments. By enhancing decision confidence, adaptability, and automation, the framework
Murat, AlperChinnam, Ratna BabuRana, SatyendraRapp, Stephen H.Hansen, KurtRichman, Todd A.Bechtel, James E.
Model-Based Systems Engineering (MBSE) is a growing field in engineering design, enabling rapid prototyping and deployment of concepts. However, the quality of engineering simulations depends heavily on the quality of the models used. As a result, quantifying and reducing model error is critical in MBSE. To do this effectively, examining how model error is measured is crucial. Error metrics reduce the complex relationship between predicted and measured behavior to a single scalar value. This compression can introduce bias, but it is necessary for error quantification and surrogate generation. This paper examines the impact of this compression on model behavior and offers a decision framework for choosing error metrics. While not all uncertainty is reducible, modelers should decide which uncertainties are acceptable and how they are measured.
Taylor, EvanMocko, GregoryLouis, Ed
The publishing of MIL-STD-3072 is critical to the Army’s introduction of electrified vehicles. It is the first of three documents to replace MIL-PRF-GCS600A, a performance specification that is loosely referenced by engineers but lacks necessary details. MIL-STD-3072 defines the characteristics of 600 VDC electric power that will be supplied to utilization equipment. Following this release, MIL-HDBK-3072 will provide suggested test methods for compliance with the standard, and MIL-PRF-3072 will provide generic device specifications for interfaces, control, and safety. Together, these three documents define a set of requirements that vehicles and equipment with 600 VDC electrical systems must operate within.
Haynes, AricSpina, JasonBest, Melissa
Advances in conformable tank technology have resulted in opportunities to harness and deploy hydrogen energy in a variety of operational environments. Various use cases are described, and the benefits of these unique storage systems in vehicular, stationary, and bulk storage applications are illustrated. The impressive scalability of conformable hydrogen tank production is also explained, as it relates to the cost effective and broad application of these storage systems.
Johnston, StephenKondogiani, Chris
The automotive industry’s systems and over-the-air (OTA) updates have vulnerabilities in its software supply chain (SSC). Although frameworks like Uptane have improved OTA security, gaps remain in ensuring software integrity and provenance. In this paper, we examine challenges securing the automotive SSC and introduce a framework, GUIXCHAIN, that integrates version control, reproducible builds, blockchain technology, and software bills of materials (SBoMs) for transparency, auditability, and resilience. Reproducible builds guarantee identical resulting binaries when compiling the same source code in different environments, as any deviation in the final output indicates a potential compromise in the build process, such as malware injection. Our preliminary study shows Guixchain’s use of reproducible builds ensures consistent and integrity-secured software across various build environments. The blockchain provides forensic capabilities, offering a history of the what, who and where of
Aideyan, IwinosaPesé, Mert D.Brooks, Richard
Drones, or Unmanned Aerial Vehicles (UAVs) pose an increasing threat to military ground vehicles due to their precision strike capabilities, surveillance functions, and ability to engage in electronic warfare. Their agility, speed, and low visibility allow them to evade traditional defense systems, creating an urgent need for advanced AI-driven detection models that quickly and accurately identify UAV threats while minimizing false positives and negatives. Training effective deep-learning models typically requires extensive, diverse datasets, yet acquiring and annotating real-world UAV imagery is expensive, time-consuming, and often non-feasible, especially for imagery featuring relevant UAV models in appropriate military contexts. Synthetic data, generated via digital twin simulation, offers a viable approach to overcoming these limitations. This paper presents some of the work Duality AI is doing in conjunction with the Army’s Program Executive Office Ground Combat Systems (PEO GCS
Mejia, FelipeShah, SunilYoung, Preston C.Brunk, Andrew T.
As unmanned vehicular networks become more prevalent in civilian and defense applications, the need for robust security solutions grows in parallel. While ROS 2 offers a flexible platform for robotic operations, its security model lacks the adaptability required for dynamic trust management and proactive threat mitigation. To address these shortcomings, we propose a novel framework that integrates containerized ROS 2 nodes with Kubernetes-based orchestration, a dynamic trust management subsystem, and integrability with simulators for real-time and protocol-flexible network simulation. By embedding trust management directly within each ROS 2 container and leveraging Kubernetes, we overcome ROS 2’s security limitations by enabling real-time monitoring and machine learning-driven anomaly detection (via an autoencoder trained on custom data), facilitating the isolation or removal of suspicious nodes. Additionally, Kubernetes policies allow seamless scaling and enforcement of trust-based
Tinker, NoahBoone, JuliaWang, Kuang-Ching
Automated, telerobotic, and autonomous off road vehicles present unique safety concerns for their users, both military and civilian, due to their complexity and their extensive use of open source software. This is particularly true when personnel are intermingled with vehicles as is common during many operations. This paper presents a unique approach to providing true functional safety while permitting the developers of the automated/telerobotic/autonomous hardware and software to rapidly implement changes and improvements.
Underhill, MarkDelecki, RichSullivan, Denis O.
The Vision for Off-road Autonomy (VORA) project used passive, vision-only sensors to generate a dense, robust world model for use in off-road navigation. The research resulted in vision-based algorithms applicable to defense and surveillance autonomy, intelligent agricultural applications, and planetary exploration. Passive perception for world modeling enables stealth operation (since lidars can alert observers) and does not require more expensive or specialized sensors (e.g., radar or lidar). Over the course of this three-phase program, SwRI built components of a vision-only navigation pipeline and tested the result on a vehicle platform in an off-road environment.
Towler, Meera DayGarza, Harold A.Chambers, David R.
Charcoal is a frequently used resource by the DoD with numerous applications. Military charcoal is produced through destructive distillation of a variety of wood types, resulting in a high degree of batch-to-batch variability. Depending on the application of the charcoal, this variability can result in undesirable characteristics in the end-product. To address this issue, DEVCOM AC is examining a charcoal bio-manufactured by DEVCOM CBC using bacteriophages. This highly controlled process results in the consistent production of charcoal with a variety of desirable characteristics, including a high surface area available for combustion due to its porosity as well as a high level of purity. In this effort, DEVCOM AC is investigating this bio-manufactured charcoal as a drop-in replacement in comparison to standard charcoal for applications of interest to boost ignition performance. This work will produce a drop-in-replacement for a DoD-critical resource with improved characteristics
Rozumov, EugeneBird, DavidCrumbley, AnnaMorris, LaurenGrau, HenryWilson, DanielStern, AaronDecker, Robert
Time-Sensitive Networking (TSN) is a modern networking technology that promises to combine the speed, performance, and scalability of traditional best-effort Ethernet with the resilience and assurance of a safety-critical communications bus, all in a single physical network infrastructure. Although TSN is over a decade old, the collection of standards and profiles of which it consists are still evolving at a fast pace. Significant work remains to converge on a set of standardization and implementation details that will lead to meaningful interoperability in military ground vehicle applications. This paper explores the current state of TSN and how DEVCOM-GVSC’s partnership with industry, through collaborative refinement of ground combat vehicle requirements, is accelerating the adoption of this foundational MOSA-enabling technology.
Sopel, ShaneElliott, LeonardKinstler, ErikSalama, Christina
Time-Sensitive Networking (TSN) enhances Ethernet with features such as time synchronization, scheduled traffic, policing, and redundancy to enable highly deterministic and reliable communications in mission-critical systems. This paper presents a comprehensive approach to the configuration, analysis, and verification of TSN for critical systems, with a focus on time-sensitive applications such as tank barrel stabilization. The impact of different types of topologies, traffic types, and application requirements on the configuration complexity are presented along with various mathematical techniques to generate network solutions and verify against the system requirements. Detailed modeling, configuration, and analysis of TSN is demonstrated using a representative mixed criticality converged network. Lastly, configuration techniques to minimize the latency, jitter, and frame loss while maximizing the network utilization are presented.
Bush, Stephen F.Jabbar, Abdul
In modern defense manufacturing, achieving technological superiority hinges on both rapid decision-making and unparalleled precision engineering. Advanced machining systems, such as 5-axis CNC machines, play a pivotal role by enabling the production of intricate, free-form geometries with micron-level accuracy. However, these advances often necessitate deep domain expertise for optimal tool selection and machining parameter configuration. This paper introduces GraphLLM, a model-agnostic approach that integrates structured knowledge graphs with large language models (LLMs) to enhance the accuracy and reliability of technical responses. By automatically extracting domain-specific entities and relationships from documents, GraphLLM mitigates LLM hallucinations and improves performance, especially in technically challenging or out-of-distribution queries. Experimental evaluations across various LLaMA models demonstrate significant uplifts of 25%, highlighting the framework’s potential to
Hoang, DannyGorsich, DavidCastanier, MatthewImani, Farhad
The use of modeling and simulation (M&S) to enable aggressive training, testing, analysis, and experimentation of capabilities has risen in recent years. An increase in M&S demand to enable Force Readiness necessitates the use of modular and reusable simulation software. To meet this need, the U.S. Army Combat Capabilities Development Command Ground Vehicle Systems Center (DEVCOM GVSC) has developed a modular simulation software framework called Project Great Lakes (ProjectGL). The software supports complex simulation requirements for multiple vehicles, terrains, sensors and other technologies, while using a common, internal framework to support extensive configuration. The paper presents the framework’s core design philosophy, architecture and common use cases. The paper concludes with a discussion on possible areas of framework expansion and development guidelines for partners interested in extending the framework.
Stanko, ThomasJoyce, JonathanBarry, JamesFlores, DavidHogan, JasonMiller, DavidBanoon, HawraaBostick, WilliamCampbell, CaleGangl, JoshuaHideg, ChristopherKlein, PhilipMacAfee, AndrewMalinowski, BenjaminMatthews, JeffreyMorton, StuartMontague, JoshuaThompson, ChristopherTily, ConorTrombley, AlexanderMikulski, Christopher
CAMX Power is developing enhanced safety, high-power, OV-tolerant Li-ion 6T batteries implementing our CELX-RC® chemistry which incorporates our proprietary GEMX® cathode opposite lithium titanate (LTO) anode. The advantages of the CAMX Power 6T battery include high tolerance of severe mechanical, thermal and electrical abuse, exceptional fast charge capability, and extreme low-temperature performance capabilities (e.g., -60 °C). This 6T battery can also be repeatedly discharged to 0V and stored in that condition without maintenance, greatly enhancing logistical management, handling and safety. The CAMX Power 6T battery will provide enhanced performance and safety in extreme environments and operational conditions which cannot be met by 6T batteries made with conventional Li-ion chemistry.
Ofer, DavidHui, SamTorname, NoahMcCoy, ChrisSiegal, EdNedder, DavidStringfellow, RichardRutberg, Michael
A kinematic model of primary piston motion was developed along with a simplified combustion model for the purpose of evaluating various factors that could impact the piston skirt thrust loads of an Opposed Piston Two Stroke Diesel engine. The assessment considered connecting rod length, wrist pin mass, peak cylinder pressure, indicated torque, and wrist pin offset. The results show that small changes in connecting rod length could realize significant improvements in piston skirt friction as well as increased engine performance. The results indicate that small increases in overall engine width should be considered when optimizing for reduced oil consumption and enhanced piston skirt lubrication.
Srodawa, John
Thermal or infrared signature management simulations of hybrid electric ground vehicles require modeling complex heat sources not present in traditional vehicles. Fast-running multi-physics simulations are necessary for efficiently and accurately capturing the contribution of these electrical drivetrain components to vehicle thermal signature. The infrared signature and heat transfer simulation tool, “Multi-Service Electro-optic Signature” (MuSES), is being updated to address these challenges by expanding its thermal-electrical simulation capabilities, provide a coupling interface to system zero- and one-dimensional modeling tools, and model three-dimensional air flow and its convection effects. These simulation capabilities are used to compare the infrared signatures of a tactical ground vehicle with a traditional powertrain to a hybrid electric version of the same vehicle and demonstrate a reduction in contrast while operating under electrically powered conditions of silent watch and
Patterson, StevenEdel, ZacharyCanull, LoganPryor, JoshuaRynes, PeteTison, NathanKorivi, Vamshi
This study develops a biological-electrochemical process for ammonia fuel production from high-strength blackwater, integrating enhanced ammonification, anaerobic digestion (AD), and electrodialysis (ED). The system achieved 90% COD removal, with Bacillus subtilis increasing NH3-N concentrations by 113%, enhancing nitrogen recovery. AD reduced volatile solids by 60%, producing 200 mL/day of biogas with 70% methane content, and increased NH3-N from 215 to 308 mg/L in the effluent. ED concentrated ammonia to 3 g NH3-N/L with an energy consumption of 1.8 Wh/L, while diluted effluent contained <30 mg NH3-N/L. The system generated a net energy output of 20.48 kWh-e/day, transforming wastewater from an energy sink into an energy-positive process. This approach enables high-efficiency nitrogen recovery, converting waste into ammonia fuel for reformation efforts, while supporting decentralized sanitation solutions.
Thomas, BenjaminEmerson, EmiliaSmerigan, BlakeMonson, CarterLiu, YanBoltersdorf, JonathanHill, CarolineDillon, Robert J.Baker, David R.Dusenbury, JamesLiao, Wei
Increasing the mission capability of ground combat and tactical vehicles can lead to new concepts of operation that enhance safety and effectiveness of warfighters. High-temperature power electronics enabled by wide-bandgap semiconductors such as silicon carbide can provide the required power density to package new capabilities into space-constrained vehicles and provide features including silent mobility, boost acceleration, regenerative braking, adaptive cooling, and power for future protection systems and command and control (C2) on the move. An architecture using high voltage [1] would best satisfy the ever-increasing power demands to enable defense against unmanned aerial systems (UAS) and offensive directed energy (DE) systems for advanced survivability and lethality capabilities.
Eddins, R.Lambert, C.Habic, D.Haynes, A.Spina, J.Schwartz, E.
Object detection has many different uses in Command and Control (C2) systems such as autonomous control, target tracking, threat detection, and general surveillance. Graphics Processing Units (GPUs) are the de-facto standard hardware for these types of workloads in datacenter environments. Still, when deploying to an edge environment many considerations are required to ensure an optimized deployment. This paper provides a general overview of how to utilize GPUs for AI inference for object detection at the edge using NVIDIA® HoloScan as well as an overview of the many considerations to account for when selecting the most optimal GPU for any specific ground vehicle solution.
Whitlock, Nick
The development of cyber-physical systems necessarily involves the expertise of an interdisciplinary team – not all of whom have deep embedded software knowledge. Graphical software development environments alleviate many of these challenges but in turn create concerns for their appropriateness in a rigorous software initiative. Their tool suites further enable the creation of physics models which can be coupled in the loop with the corresponding software component’s control law in an integrated test environment. Such a methodology addresses many of the challenges that arise in trying to create suitable test cases for physics-based problems. If the test developer ensures that test development in such a methodology observes software engineering’s design-for-change paradigm, the test harness can be reused from a virtualized environment to one using a hardware-in-the-loop simulator and/or production machinery. Concerns over the lack of model-based software engineering’s rigor can be
McBain, Jordan
Navigation in off-road terrains is a well-studied problem for self-driving and autonomous vehicles. Frequently cited concerns include features like soft soil, rough terrain, and steep slopes. In this paper, we present the important but less studied aspect of negotiating vegetation in off-road terrain. Using recent field measurements, we develop a fast running model for the resistance on a ground vehicle overriding both small vegetation like grass and larger vegetation like bamboo and trees. We implement of our override model into a 3D simulation environment, the MSU Autonomous Vehicle Simulator (MAVS), and demonstrate how this model can be incorporated into real-time simulation of autonomous ground vehicles (AGV) operating in off-road terrain. Finally, we show how this model can be used to simulate autonomous navigation through a variety of vegetation with a PID speed controller and measuring the effect of navigation through vegetation on the vehicle speed.
Goodin, ChristopherMoore, Marc N.Hudson, Christopher R.Carruth, Daniel W.Salmon, EthanCole, Michael P.Jayakumar, ParamsothyEnglish, Brittney