43 research outputs found

    Segurança de computadores por meio de autenticação intrínseca de hardware

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    Orientadores: Guido Costa Souza de Araújo, Mario Lúcio Côrtes e Diego de Freitas AranhaTese (doutorado) - Universidade Estadual de Campinas, Instituto de ComputaçãoResumo: Neste trabalho apresentamos Computer Security by Hardware-Intrinsic Authentication (CSHIA), uma arquitetura de computadores segura para sistemas embarcados que tem como objetivo prover autenticidade e integridade para código e dados. Este trabalho está divido em três fases: Projeto da Arquitetura, sua Implementação, e sua Avaliação de Segurança. Durante a fase de projeto, determinamos como integridade e autenticidade seriam garantidas através do uso de Funções Fisicamente Não Clonáveis (PUFs) e propusemos um algoritmo de extração de chaves criptográficas de memórias cache de processadores. Durante a implementação, flexibilizamos o projeto da arquitetura para fornecer diferentes possibilidades de configurações sem comprometimento da segurança. Então, avaliamos seu desempenho levando em consideração o incremento em área de chip, aumento de consumo de energia e memória adicional para diferentes configurações. Por fim, analisamos a segurança de PUFs e desenvolvemos um novo ataque de canal lateral que circunvê a propriedade de unicidade de PUFs por meio de seus elementos de construçãoAbstract: This work presents Computer Security by Hardware-Intrinsic Authentication (CSHIA), a secure computer architecture for embedded systems that aims at providing authenticity and integrity for code and data. The work encompassed three phases: Design, Implementation, and Security Evaluation. In design, we laid out the basic ideas behind CSHIA, namely, how integrity and authenticity are employed through the use of Physical Unclonable Functions (PUFs), and we proposed an algorithm to extract cryptographic keys from the intrinsic memories of processors. In implementation, we made CSHIA¿s design more flexible, allowing different configurations without compromising security. Then, we evaluated CSHIA¿s performance and overheads, such as area, energy, and memory, for multiple configurations. Finally, we evaluated security of PUFs, which led us to develop a new side-channel-based attack that enabled us to circumvent PUFs¿ uniqueness property through their architectural elementsDoutoradoCiência da ComputaçãoDoutor em Ciência da Computação2015/06829-2; 2016/25532-3147614/2014-7FAPESPCNP

    Energy Harvesting and Sensor Based Hardware Security Primitives for Cyber-Physical Systems

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    The last few decades have seen a large proliferation in the prevalence of cyber-physical systems. Although cyber-physical systems can offer numerous advantages to society, their large scale adoption does not come without risks. Internet of Things (IoT) devices can be considered a significant component within cyber-physical systems. They can provide network communication in addition to controlling the various sensors and actuators that exist within the larger cyber-physical system. The adoption of IoT features can also provide attackers with new potential avenues to access and exploit a system\u27s vulnerabilities. Previously, existing systems could more or less be considered a closed system with few potential points of access for attackers. Security was thus not typically a core consideration when these systems were originally designed. The cumulative effect is that these systems are now vulnerable to new security risks without having native security countermeasures that can easily address these vulnerabilities. Even just adding standard security features to these systems is itself not a simple task. The devices that make up these systems tend to have strict resource constraints in the form of power consumption and processing power. In this dissertation, we explore how security devices known as Physically Unclonable Functions (PUFs) could be used to address these concerns. PUFs are a class of circuits that are unique and unclonable due to inherent variations caused by the device manufacturing process. We can take advantage of these PUF properties by using the outputs of PUFs to generate secret keys or pseudonyms that are similarly unique and unclonable. Existing PUF designs are commonly based around transistor level variations in a special purpose integrated circuit (IC). Integrating these designs within a system would still require additional hardware along with system modification to interact with the device. We address these concerns by proposing a novel PUF design methodology for the creation of PUFs whose integration within these systems would minimize the cost of redesigning the system by reducing the need to add additional hardware. This goal is achieved by creating PUF designs from components that may already exist within these systems. A PUF designed from existing components creates the possibility of adding a PUF (and thus security features) to the system without actually adding any additional hardware. This could allow PUFs to become a more attractive security option for integration with resource constrained devices. Our proposed approach specifically targets sensors and energy harvesting devices since they can provide core functions within cyber-physical systems such as power generation and sensing capabilities. These components are known to exhibit variations due to the manufacturing process and could thus be utilized to design a PUF. Our first contribution is the proposal of a novel PUF design methodology based on using components which are already commonly found within cyber-physical systems. The proposed methodology uses eight sensors or energy harvesting devices along with a microcontroller. It is unlikely that single type of sensor or energy harvester will exist in all possible cyber-physical systems. Therefore, it is important to create a range of designs in order to reach a greater portion of cyber-physical systems. The second contribution of this work is the design of a PUF based on piezo sensors. Our third contribution is the design of a PUF that utilizes thermistor temperature sensors. The fourth contribution of this work is a proposed solar cell based PUF design. Furthermore, as a fifth contribution of this dissertation we evaluate a selection of common solar cell materials to establish which type of solar cell would be best suited to the creation of a PUF based on the operating conditions. The viability of the proposed designs is evaluated through testing in terms of reliability and uniformity. In addition, Monte Carlo simulations are performed to evaluate the uniqueness property of the designs. For our final contribution we illustrate the security benefits that can be achieved through the adoption of PUFs by cyber-physical systems. For this purpose we chose to highlight vehicles since they are a very popular example of a cyber-physical system and they face unique security challenges which are not readily solvable by standard solutions. Our contribution is the proposal of a novel controller area network (CAN) security framework that is based on PUFs. The framework does not require any changes to the underlying CAN protocol and also minimizes the amount of additional message passing overhead needed for its operation. The proposed framework is a good example of how the cost associated with implementing such a framework could be further reduced through the adoption of our proposed PUF designs. The end result is a method which could introduce security to an inherently insecure system while also making its integration as seamless as possible by attempting to minimize the need for additional hardware

    Energy-Efficient Neural Network Hardware Design and Circuit Techniques to Enhance Hardware Security

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    University of Minnesota Ph.D. dissertation. May 2019. Major: Electrical Engineering. Advisor: Chris Kim. 1 computer file (PDF); ix, 108 pages.Artificial intelligence (AI) algorithms and hardware are being developed at a rapid pace for emerging applications such as self-driving cars, speech/image/video recognition, deep learning, etc. Today’s AI tasks are mostly performed at remote datacenters, while in the future, more AI workloads are expected to run on edge devices. To fulfill this goal, innovative design techniques are needed to improve energy-efficiency, form factor, and as well as the security of AI chips. In this dissertation, two topics are focused on to address these challenges: building energy-efficient AI chips based on various neural network architectures, and designing “chip fingerprint” circuits as well as counterfeit chip sensors to improve hardware security. First of all, in order to deploy AI tasks on edge devices, we come up with various energy and area efficient computing platforms. One is a novel time-domain computing scheme for fully connected multi-layer perceptron (MLP) neural network and the other is an efficient binarized architecture for long short-term memory (LSTM) neural network. Secondly, to enhance the hardware security and ensure secure data communication between edge devices, we need to make sure the authenticity of the chip. Physical Unclonable Function (PUF) is a circuit primitive that can serve as a chip “fingerprint” by generating a unique ID for each chip. Another source of security concerns comes from the counterfeit ICs, and recycled and remarked ICs account for more than 80% of the counterfeit electronics. To effectively detect those counterfeit chips that have been physically compromised, we came up with a passive IC tamper sensor. This proposed sensor is demonstrated to be able to efficiently and reliably detect suspicious activities such as high temperature cycling, ambient humidity rise, and increased dust particles in the chip cavity
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