...
【24h】

Conductive Flow Theory of Knowledge

机译:知识传导流理论

获取原文
           

摘要

In this paper, we propose a methodology for quantifying the flow of knowledge based on simple rules of flow that govern the flow of current, heat or fluids. Knowledge being radically different from any of these established down-to-earth physical entities starts to display that the approach based on conduction theory soon become ineffective, if not futile to be precise for the quantification of the flow of knowledge. However, the inroads the these discipline carved out over many decades offer a rough mapping of potentials, resistances, path impedances, work-done and energies transferred. At the outset, knowledge does not abide by universal law of conservation of energy nor by the basic laws of fluid mechanics, instead knowledge needs its own laws and precepts to quantify its flow, rate of flow, and energies transferred from one knowledge centric object (KCO) to another.The conceptual framework evolved in this paper, together with the tools of characterization of KCOs in any given discipline offers the explanation that the knowledge potential acquired by anyone depends on the differences of knowledge potentials, the duration and the quality of interaction, and the resistance to flow of knowledge between the participants. Concepts developed here are generic and they can be used most disciplines and in most places. The paper also identifies the makeup of the “source” and the “receptor” KCOs and addresses the process of knowledge transfer wherein the constitution of the KCOs is altered and adjusted by the “work done” during the knowledge energy transfer. By adapting and enhancing equations from heat- current- or fluid- flow laws of physics, electrical engineering or fluid mechanics, we propose the knowledge flow can be similarly quantified. Though simple and direct, this approach is coarse and approximate. It yields values for knowledge entities that happen at a subconscious level for human minds and for animate objects and at data- and knowledge levels in intelligent communication systems and machines.
机译:在本文中,我们提出了一种基于支配电流,热量或流体流动的简单流动规则来量化知识流动的方法。与这些已建立的扎实的物理实体中的任何一个根本不同的知识开始表明,基于传导理论的方法很快就变得无效,即使对于精确量化知识流没有用。但是,这些学科数十年来所取得的进展为电位,电阻,路径阻抗,功和能量传递提供了粗略的映射。首先,知识既不遵守能量守恒定律,也不遵守流体力学基本定律,相反,知识需要自己的定律和法则来量化从一个以知识为中心的对象传递的流量,流量和能量(本文提出的概念框架以及在任何给定学科中表征KCO的工具都提供了一种解释,即任何人获得的知识潜能都取决于知识潜能,持续时间和互动质量的差异。 ,以及参与者之间知识交流的阻力。这里开发的概念是通用的,可以在大多数学科和大多数地方使用。本文还确定了“来源”和“受体” KCO的构成,并论述了知识转移的过程,其中知识转移过程中的“已完成工作”改变和调整了KCO的构成。通过适应和增强来自物理,电气工程或流体力学的热流或流体流动定律的方程式,我们建议可以类似地量化知识流。尽管简单直接,但这种方法是粗略且近似的。它产生了知识实体的价值,这些知识实体发生在人的意识,动画对象以及智能通信系统和机器中的数据和知识级别的潜意识水平上。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号