2,380 research outputs found

    Multiple Input-Multiple Output Cycle-to-Cycle Control of Manufacturing Processes

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    Cycle-to-cycle control is a method for using feedback to improve product quality for processes that are inaccessible within a single processing cycle. This limitation stems from the impossibility or the prohibitively high cost of placing sensors and actuators that could facilitate control during, or within, the process cycle. Our previous work introduced cycle to cycle control for single input-single output systems, and here it is extended to multiple input-multiple output systems. Gain selection, stability, and process noise amplification results are developed and compared with those obtained by previous researchers, showing good agreement. The limitation of imperfect knowledge of the plant model is then imposed. This is consistent with manufacturing environments where the cost and number of tests to determine a valid process model is desired to be minimal. The implications of this limitation are modes of response that are hidden from the controller. Their effects on system performance and stability are discussed.Singapore-MIT Alliance (SMA

    The Paulsen Problem, Continuous Operator Scaling, and Smoothed Analysis

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    The Paulsen problem is a basic open problem in operator theory: Given vectors u1,,unRdu_1, \ldots, u_n \in \mathbb R^d that are ϵ\epsilon-nearly satisfying the Parseval's condition and the equal norm condition, is it close to a set of vectors v1,,vnRdv_1, \ldots, v_n \in \mathbb R^d that exactly satisfy the Parseval's condition and the equal norm condition? Given u1,,unu_1, \ldots, u_n, the squared distance (to the set of exact solutions) is defined as infvi=1nuivi22\inf_{v} \sum_{i=1}^n \| u_i - v_i \|_2^2 where the infimum is over the set of exact solutions. Previous results show that the squared distance of any ϵ\epsilon-nearly solution is at most O(poly(d,n,ϵ))O({\rm{poly}}(d,n,\epsilon)) and there are ϵ\epsilon-nearly solutions with squared distance at least Ω(dϵ)\Omega(d\epsilon). The fundamental open question is whether the squared distance can be independent of the number of vectors nn. We answer this question affirmatively by proving that the squared distance of any ϵ\epsilon-nearly solution is O(d13/2ϵ)O(d^{13/2} \epsilon). Our approach is based on a continuous version of the operator scaling algorithm and consists of two parts. First, we define a dynamical system based on operator scaling and use it to prove that the squared distance of any ϵ\epsilon-nearly solution is O(d2nϵ)O(d^2 n \epsilon). Then, we show that by randomly perturbing the input vectors, the dynamical system will converge faster and the squared distance of an ϵ\epsilon-nearly solution is O(d5/2ϵ)O(d^{5/2} \epsilon) when nn is large enough and ϵ\epsilon is small enough. To analyze the convergence of the dynamical system, we develop some new techniques in lower bounding the operator capacity, a concept introduced by Gurvits to analyze the operator scaling algorithm.Comment: Added Subsection 1.4; Incorporated comments and fixed typos; Minor changes in various place

    Forced dynamic dewetting of structured surfaces: Influence of surfactants

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    We analyse the dewetting of printing plates for gravure printing with well-defined gravure cells. The printing plates were mounted on a rotating horizontal cylinder that is half immersed in an aqueous solution of the anionic surfactant sodium 1-decanesulfonate. The gravure plates and the presence of surfactants serve as one example of a real-world dewetting situation. When rotating the cylinder, a liquid meniscus was partially drawn out of the liquid forming a dynamic contact angle at the contact line. The dynamic contact angle is decreased on a structured surface as compared to a smooth one. This is due to contact line pinning at the borders of the gravure cells. Additionally, surfactants tend to decrease the dynamic receding contact angle. We consider the interplay between these two effects. We compare the height differences of the meniscus on the structured and unstructured area as function of dewetting speeds. The height difference increases with increasing dewetting speed. With increasing size of the gravure cells this height difference and the induced changes in the dynamic contact angle increased. By adding surfactant, the height difference and the changes in the contact angle for the same surface decreased. We further note that although the liquid dewets the printing plates some liquid is always left in the gravure cell. At high enough surfactant concentrations or high enough dewetting speed, the dynamic contact angles in the structured surface approach those in flat surfaces. We conclude that surfactant reduces the influence of surface structure on dynamic dewetting

    Marginal Release Under Local Differential Privacy

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    Many analysis and machine learning tasks require the availability of marginal statistics on multidimensional datasets while providing strong privacy guarantees for the data subjects. Applications for these statistics range from finding correlations in the data to fitting sophisticated prediction models. In this paper, we provide a set of algorithms for materializing marginal statistics under the strong model of local differential privacy. We prove the first tight theoretical bounds on the accuracy of marginals compiled under each approach, perform empirical evaluation to confirm these bounds, and evaluate them for tasks such as modeling and correlation testing. Our results show that releasing information based on (local) Fourier transformations of the input is preferable to alternatives based directly on (local) marginals

    Differentially Private Model Selection with Penalized and Constrained Likelihood

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    In statistical disclosure control, the goal of data analysis is twofold: The released information must provide accurate and useful statistics about the underlying population of interest, while minimizing the potential for an individual record to be identified. In recent years, the notion of differential privacy has received much attention in theoretical computer science, machine learning, and statistics. It provides a rigorous and strong notion of protection for individuals' sensitive information. A fundamental question is how to incorporate differential privacy into traditional statistical inference procedures. In this paper we study model selection in multivariate linear regression under the constraint of differential privacy. We show that model selection procedures based on penalized least squares or likelihood can be made differentially private by a combination of regularization and randomization, and propose two algorithms to do so. We show that our private procedures are consistent under essentially the same conditions as the corresponding non-private procedures. We also find that under differential privacy, the procedure becomes more sensitive to the tuning parameters. We illustrate and evaluate our method using simulation studies and two real data examples

    Interactive grid-access using GridSolve and Giggle

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    General purpose Problem Solving Environments (PSEs) like Matlab are widely used in the fields of science for development of new algorithms. If a lot of computing power is required to run these algorithms, today's PSEs lack support for accessing the distributed infrastructures of the organisation (i.e. grids), which limits the size of the problems that can be solved. This contribution shows a new approach to utilize the grid from within PSEs without major adjustments by the user. The primary tools are GridSolve and and the grid-middleware gLite. The applicability is illustrated by an exemplary algorithm (Mandelbrot calculations)
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