117,434 research outputs found

    Signification de la présence de pseudomonadacea dans des Yoghourts préparés en Algérie

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    Comby L., Tysset Camille, Crochemore . Signification de la présence de pseudomonadacea dans des Yoghourts préparés en Algérie. In: Bulletin de l'Académie Vétérinaire de France tome 115 n°2, 1962. pp. 59-65

    On-line construction of a small automaton for a finite set of words

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    In this paper we describe a ``light'' algorithm for the on-line construction of a small automaton recognising a finite set of words. The algorithm runs in linear time. We carried out good experimental results on the suffixes of a text, showing how this automaton is small. For the suffixes of a text, we propose a modified construction that leads to an even smaller automaton

    Towards a solution to the "Runs" conjecture

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    The "runs" conjecture, proposed by [Kolpakov and Kucherov, 1999], states that the number of occurrences of maximal repetitions (runs) in a string of length n is at most n. The best bound to date, due to [Crochemore and The, 2007], is 1.6n. Here we improve very much this bound using a combination of theory and computer verification. Our best bound is 1.048n but actually solving the conjecture seems to be now only a matter of tim

    From seasonal forecast skill to end-user economic benefit: the case of the Lake Como

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    Recent increase in spatiotemporal model resolution, availability of data/monitored variables, improvement in initialization procedures, and more accurate representation of physical processes contributed in advancing the quality of weather and climate services. State-of-the-art meteorological and hydrological forecast services are becoming more and more skillful over seasonal timescales, potentially representing an asset for informing strategic decisions in different economic sectors. Such services can play a key role in irrigated agriculture for supporting crop choices and irrigation scheduling decisions, which strongly depend on the expected hydro-meteorological conditions. However, although the accuracy and reliability of forecast services depend on the set up of the models that generate the forecasts, their (added) value also depends on how decision makers use the provided information in operational contexts. In this work, we contribute a novel framework to assess the value of weather and climate services, by extending traditional forecast quality assessment methods with estimates of the potential end-user economic benefit from using forecast information. We also explore the sensitivity of the potential economic benefit on both the model set up and decision maker behavioral factors. The framework is demonstrated on the Lake Como system (Italy), a regulated lake primarily operated for flood protection and irrigation supply. Our framework relies on the following integrated modeling chain: 1) lake inflows are produced from bias adjusted ECMWF System 4 seasonal forecasts used as input to the continentally-calibrated E-HYPE hydrological model; 2) this information is then used for conditioning the daily lake operations; 3) the resulting lake releases finally feed an agricultural model to estimate the net profit of the farmers in the downstream irrigation district. The whole chain was run for a 12-year period running from 1996 to 2007, including a fairly balanced number of normal, wet, and dry agricultural seasons. Results suggest that, on average, informing the Lake Como operations based on ECMWF System 4 coupled with E-HYPE hydrological forecasts allows gaining about 4% of farmers’ profit with respect to a traditional operating policy conditioned on the modelled inflow climatology. This gain rises up to 16% during intense drought episodes. Moreover, this value is shown to be particularly sensitive to climate forcing inputs, but also on how the lake operator uses the forecast information depending on the different perceptions of risk and uncertaint

    Isolating the Role of End-User Behavior in the Assessment of Seasonal Forecast Value

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    Recent improvements in model resolutions, initialization procedures, and representation of large scale hydro-meteorological processes contributed in advancing the accuracy of hydroclimatic forecasts, which are more and more skillful over the seasonal and longer timescales. These forecasts are potentially valuable for informing multisector strategic decisions, including irrigated agriculture, where they can improve crop choices and irrigation scheduling decisions. In this operational context, forecast accuracy is important but not necessarily proportional to the associated economic marginal benefit, which is also affected by how forecasts are employed by end-users. In this work, we contribute a novel framework to quantify the value of hydroclimatic forecasts by extending traditional quality assessments with estimates of the potential economic benefit of the forecasts to the end-user. We also explore the sensitivity of this benefit to both model set up and end-user behavioral factors. The approach is demonstrated on the Lake Como system (Italy), a regulated lake operated for flood protection and irrigation supply. Our framework relies on an integrated modeling chain composed of three building blocks: bias-adjusted seasonal meteorological forecasts are used as input to the continentally-calibrated E-HYPE hydrological model; predicted lake inflows are used for conditioning the daily lake operations; the resulting lake releases feed an agricultural model to estimate the net profit of the farmers in a downstream irrigation district. Results suggest that, on average, informing the Lake Como operations based on E-HYPE hydrological forecasts allows gaining about 1% of the farmers’ profit with respect to a baseline solution not informed by any forecast. This gain rises up to about 15% during intense drought episodes. Moreover, our analysis suggests that this value can be largely attributed to the hydrological model and its initial conditions, while the role of meteorological forcing emerges only during dry seasons. Lastly, our results show a high sensitivity to behavioral factors capturing different perception of risk and uncertainty, with the estimated forecast value being potentially undermined if end-users are not able to properly extract the most valuable information from the forecast ensemble

    From skill to value: Isolating the influence of end user behavior on seasonal forecast assessment

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    Recent improvements in initialization procedures and representation of large-scale hydrometeorological processes have contributed to advancing the accuracy of hydroclimatic forecasts, which are progressively more skillful over seasonal and longer timescales. These forecasts are potentially valuable for informing strategic multisector decisions, including irrigated agriculture, for which they can improve crop choices and irrigation scheduling. In this operational context, the accuracy associated with the forecast system setup does not necessarily yield proportional marginal benefit, as this is also affected by how forecasts are employed by end users. This paper aims at quantifying the value of hydroclimatic forecasts in terms of potential economic benefit to the end users, which allows for the inference of a relation between gains in forecast skill and gains in end user profit. We also explore the sensitivity of this benefit to both forecast system setup and end user behavioral factors. These analyses are supported by an evaluation framework demonstrated on the Lake Como system (Italy), a regulated lake operated for flood protection and irrigation supply. Our framework relies on an integrated modeling chain composed of three building blocks: bias-adjusted seasonal meteorological forecasts are used as input to the continentally calibrated E-HYPE hydrological model; predicted lake inflows are used for conditioning the daily lake operations; and the resulting lake releases feed an agricultural model to estimate the net profit of the farmers in a downstream irrigation district. Results suggest that despite the gain in average conditions being negligible, informing the operations of Lake Como based on seasonal hydrological forecasts during intense drought episodes allows about 15 % of the farmers' profit to be gained with respect to a baseline solution not informed by any forecast. Moreover, our analysis suggests that behavioral factors capturing different perceptions of risk and uncertainty significantly impact the quantification of the benefit to the end users, whereby the estimated forecast value is potentially undermined by different levels of end user risk aversion. Lastly, our results show an intricate skill-to-value relation modulated by the underlying hydrologic conditions, which is well aligned over an exponential function in dry years, while the gains in profit are almost insensitive to the improvements in forecast skill in wet years

    Finding Maximal Pairs with Bounded Gap

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    Brodal GS, Lyngsø RB, Pedersen CNS, Stoye J. Finding Maximal Pairs with Bounded Gap. In: Crochemore M, Gąsieniec L, eds. Matching Patterns (Journal of Discrete Algorithms). 2000: 77-104

    Going Beyond Counting First Authors in Author Co-citation Analysis

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    The present study examines one of the fundamental aspects of author co-citation analysis (ACA) - the way co-citation counts are defined. Co-citation counting provides the data on which all subsequent statistical analyses and mappings are based, and we compare ACA results based on two different types of co-citation counting - the traditional type that only counts the first one among a cited work's authors on the one hand and a non-traditional type that takes into account the first 5 authors of a cited work on the other hand. Results indicate that the picture produced through this non-traditional author co-citation counting contains more coherent author groups and is therefore considerably clearer. However, this picture represents fewer specialties in the research field being studied than that produced through the traditional first-author co-citation counting when the same number of top-ranked authors is selected and analyzed. Reasons for these effects are discussed
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