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Local Extremes of Selected Industry 4.0 Indicators in the European Space—Structure for Autonomous Systems

机译:欧洲空间结构的所选行业4.0指标的局部极端极端的自治系统

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In the past, the social and economic impacts of industrial revolutions have been clearly identified. The current Fourth Industrial Revolution (Industry 4.0) is characterized by robotization, digitization, and automation. This will transform the production processes, but also the services or financial markets. Specific groups of people and activities may be replaced by new information technologies. Changes represent an extreme risk of economic instability and social change. The authors described available published sources and selected a group of indicators related to Industry 4.0. The indicators were divided into five groups and summarized by negative or positive impact. The indicators were analyzed by precedence analysis. Extremes in the geographical dislocation of factor values were found. Furthermore, spatial dependencies in the distribution of these extremes were found by calculating multiple (long) precedencies. European countries were classified according to individual groups of indicators. The results were compared with the real values of the indicators. The indicated extremes and their distribution will allow to predict changes in the behavior of the population given by changes in the socio-economic environment. The behavior of the population can be described by the behavior of autonomous systems on selected infrastructure. The paper presents research related to the creation of a multiagent model for the prediction of spatial changes in population distribution induced by Industry 4.0.
机译:在过去,已经明确确定了工业革命的社会和经济影响。目前的第四次工业革命(行业4.0)的特点是通过机器化,数字化和自动化为特征。这将改变生产流程,还可以改变服务或金融市场。特定的人员和活动组可以被新的信息技术所取代。变化代表了经济不稳定和社会变革的极端风险。作者描述了可用发布的来源,并选择了一组与行业4.0相关的指标。该指标分为五组,并通过负面影响总结。通过优先分析分析该指标。发现因子值的地理位置中的极端。此外,通过计算多个(长)优先态,发现了这些极端的分布中的空间依赖性。欧洲国家根据各组指标分类。将结果与指标的实际值进行比较。所示的极端及其分配将允许预测社会经济环境变化所赋予的人数的变化。可以通过自主系统对所选基础架构的行为来描述人口的行为。本文提出了与创建多算模型的研究,以预测产业4.0诱导人口分布的空间变化。

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