15 research outputs found

    ADVANCES IN IMPROVING SCALABILITY AND ACCURACY OF MLNS USING SYMMETRIES

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    ADVANCES IN IMPROVING SCALABILITY AND ACCURACY OF MLNS USING SYMMETRIE

    Studies of Lubricant Degradation, Soot Aggregation and Soot Morphology in the Top Ring Zone of Internal Combustion Engines

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    A study was undertaken of the dispersancy characteristics of different detergent / dispersant additive packages in the piston ring zone of two operating internal combustion engines (single cylinder diesel and petrol) utilising top ring zone sampling. The dispersant type, treat level and detergent type of two succinimide dispersants at zero, half and full treat with two different detergents, a mixed salicylate type and a phenate / sulphonate type was studied. A blotter spotter method was developed by improving the method of spot size measurement by using Thin Layer Chromatography (TLC) plates and a TLC fluorescence scanner. This enabled an accurate measure of spot size expressed as a ratio of soot spot to overall oil front. It was concluded that, in the piston ring zone, dispersancy is almost independent of dispersant type and treat rate, rather the detergent package affords the dispersancy characteristics in the piston ring zone. A method for laser scattering particle size analysis was developed using a Malvern Mastersizer S to determine particle size distributions of the insolubles in the above diesel ring zone oil samples. Observations are that distinct particle size bands occur at -0.8/1m, 5-12/1m and >12/1m. In certain cases the clear particle agglomeration was observed in the ring zone over the course of the engine run where the -0.8/1 m size band was declining at the same time as the 5-12/1m size band was increasing. Morphology studies arising from the particle size work is also covered utilising scanning electron microscopy (SEM), atomic force microscopy (AFM) and energy dispersive x-ray analysis (EDX) techniques to show that sub-micron (-20nm) particulates are also present with the -0.8/1 m particulates. The larger particles (> 12/1 m) were also shown (by SEMIEDX) to be a distinctly different type consisting mainly of calcium, aluminium, oxygen, sulphur, magnesium and iron. These particles are most probably sulphates of calcium and magnesium with some wear particles and originate from the detergent portion of the additive pack.Castrol Technology Centre, Pangbourne, Berk

    Task-adaptable, Pervasive Perception for Robots Performing Everyday Manipulation

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    Intelligent robotic agents that help us in our day-to-day chores have been an aspiration of robotics researchers for decades. More than fifty years since the creation of the first intelligent mobile robotic agent, robots are still struggling to perform seemingly simple tasks, such as setting or cleaning a table. One of the reasons for this is that the unstructured environments these robots are expected to work in impose demanding requirements on a robota s perception system. Depending on the manipulation task the robot is required to execute, different parts of the environment need to be examined, the objects in it found and functional parts of these identified. This is a challenging task, since the visual appearance of the objects and the variety of scenes they are found in are large. This thesis proposes to treat robotic visual perception for everyday manipulation tasks as an open question-asnswering problem. To this end RoboSherlock, a framework for creating task-adaptable, pervasive perception systems is presented. Using the framework, robot perception is addressed from a systema s perspective and contributions to the state-of-the-art are proposed that introduce several enhancements which scale robot perception toward the needs of human-level manipulation. The contributions of the thesis center around task-adaptability and pervasiveness of perception systems. A perception task-language and a language interpreter that generates task-relevant perception plans is proposed. The task-language and task-interpreter leverage the power of knowledge representation and knowledge-based reasoning in order to enhance the question-answering capabilities of the system. Pervasiveness, a seamless integration of past, present and future percepts, is achieved through three main contributions: a novel way for recording, replaying and inspecting perceptual episodic memories, a new perception component that enables pervasive operation and maintains an object belief state and a novel prospection component that enables robots to relive their past experiences and anticipate possible future scenarios. The contributions are validated through several real world robotic experiments that demonstrate how the proposed system enhances robot perception

    Search Relevance based on the Semantic Web

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    In this thesis, we explore the challenge of search relevance in the context of semantic search. Specifically, the notion of semantic relevance can be distinguished from the other types of relevance in Information Retrieval (IR) in terms of employing an underlying semantic model. We propose the emerging Semantic Web data on the Web which is represented in RDF graph structures as an important candidate to become such a semantic model in a search process

    Computational Theory of Mind for Human-Agent Coordination

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    In everyday life, people often depend on their theory of mind, i.e., their ability to reason about unobservable mental content of others to understand, explain, and predict their behaviour. Many agent-based models have been designed to develop computational theory of mind and analyze its effectiveness in various tasks and settings. However, most existing models are not generic (e.g., only applied in a given setting), not feasible (e.g., require too much information to be processed), or not human-inspired (e.g., do not capture the behavioral heuristics of humans). This hinders their applicability in many settings. Accordingly, we propose a new computational theory of mind, which captures the human decision heuristics of reasoning by abstracting individual beliefs about others. We specifically study computational affinity and show how it can be used in tandem with theory of mind reasoning when designing agent models for human-agent negotiation. We perform two-agent simulations to analyze the role of affinity in getting to agreements when there is a bound on the time to be spent for negotiating. Our results suggest that modeling affinity can ease the negotiation process by decreasing the number of rounds needed for an agreement as well as yield a higher benefit for agents with theory of mind reasoning.</p

    A general cognitive framework for context-aware systems: extensions and applications for high level information fusion approaches

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    Mención Internacional en el título de doctorContext-aware systems aims at the development of computational systems that process data acquired from different datasources and adapt their behaviour in order to provide the 'right' information, at the 'right' time, in the 'right' place, in the 'right' way to the 'right' person (Fischer, 2012). Traditionally computational research has tried to answer these needs by means of low-level algorithms. In the last years the combination of numeric and symbolic approaches has offered the opportunity to create systems to deal with these issues. However, although the performance of algorithms and the quality of the data directly provided by computers and devices has quickly improved, symbolic models used to represent the resulting knowledge have not yet been adapted to smart environments. This lack of representation does not allow to take advantage of the semantic quality of the information provided by new sensors. This dissertation proposes a set of extensions and applications focused on a cognitive framework for the implementation of context-aware systems based on a general model inspired by the Information Fusion paradigm. This model is stepped in several abstraction levels from low-level raw data to high level scene interpretation whose structure is determined by a set of ontologies. Each ontology level provides a skeleton that includes general concepts and relations to describe entities and their connections. This structure has been designed to promote extensibility and modularity, and might be refined to apply this model in specific domains. This framework combines a priori context knowledge represented with ontologies with real data coming from sensors to support logic-based high-level interpretation of the current situation and to automatically generate feedback recommendations to adjust data acquisition procedures. This work advocates for the introduction of general purpose cognitive layers in order to obtain a closer representation to the human cognition, generate additional knowledge and improve the high-level interpretation. Extensibility and adaptability of the basic ontology levels is demonstrated with the introduction of these traverse semantic layers which are able to be present and represent information at several granularity levels of knowledge using a common formalism. Context-based system must be able to reason about uncertainty. However the reasoning associated to ontologies has been limited to classical description logic mechanisms. This research also tackle the problem of reasoning under uncertainty circumstances through a logic-based paradigm for abductive reasoning: the Belief-Argumentation System. The main contribution of this dissertation is the adaptation of the general architecture and the theoretical proposals to several context-aware application areas such as Ambient Intelligence, Social Signal Processing and surveillance systems. The implementation of prototypes and examples for these areas are explained along this dissertation to progressively illustrate the improvements and extensions in the framework. To initially depict the general model, its components and the basic reasoning mechanisms a video-based Ambient Intelligence application is presented. The advantages and features of the framework extensions through traverse cognitive layers are demonstrated in a Social Signal Processing case for the elaboration of automatic market researches. Finally, the functioning of the system under uncertainty circumstances is illustrated with several examples to support decision makers in the detection of potential threats in common harbor scenarios.Programa Oficial de Doctorado en Ciencia y Tecnología InformáticaPresidente: José Manuel Molina López.- Secretario: Ángel Arroyo.- Vocal: Nayat Sánchez P

    Uncertainty in Artificial Intelligence: Proceedings of the Thirty-Fourth Conference

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