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相关概念视频

Autonomic Nervous System01:22

Autonomic Nervous System

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The autonomic nervous system (ANS) is a critical component of the peripheral nervous system, primarily responsible for regulating involuntary bodily functions and maintaining homeostasis. It functions in tandem with the central nervous system (CNS) to seamlessly coordinate various physiological processes without the need for conscious control.
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Accelerators01:17

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Accelerators in concrete serve as admixtures to speed up the hardening process, enabling the concrete to achieve early strength faster. Although accelerators do not necessarily impact the time it takes concrete to set, they reduce this time in practice. A common accelerator is calcium chloride, which is particularly useful for hastening early strength development in cold weather or for rapid repair jobs that require quick heat generation after mixing.
The effectiveness of calcium chloride can...
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Machines01:19

Machines

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Machines are complex structures consisting of movable, pin-connected multi-force members that work together to transmit forces. One example of a machine is the cutting plier, which is used to cut wires by applying forces to its handles. When equal and opposite forces are exerted on the handles of the cutting plier, they cause the cutting edges to come together and apply equal and opposite reaction forces on the wire, which are greater than the applied forces.
A free-body diagram of the...
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Autonomic Nervous System: Overview01:26

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The human nervous system is divided into two main parts: the central nervous system (CNS) and the peripheral nervous system (PNS). The CNS is composed of the brain and spinal cord, while the PNS contains nerve cells, clusters of nerve cells, and the sensory receptors that are outside the CNS. The PNS has two types of nerve cells: sensory (afferent) and motor (efferent). Sensory cells send signals to the CNS from receptors, and motor cells carry signals from the CNS to organs, muscles, and...
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Disorders of the Autonomic Nervous System01:18

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The autonomic nervous system (ANS) is an intricate network of nerves that controls functions such as the regulation of heart rate, digestion, and blood pressure regulation. When this system malfunctions, it can lead to various disorders that affect multiple bodily functions. One common feature of many autonomic disorders is the involvement of smooth blood vessels, which play a crucial role in regulating blood flow throughout the body.
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Average Acceleration01:30

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The importance of understanding acceleration spans our day-to-day experiences, as well as the vast reaches of outer space and the tiny world of subatomic physics. In everyday conversation, to accelerate means to speed up. For instance, we are familiar with the acceleration of our car; the harder we apply our foot to the gas pedal, the faster we accelerate. The greater the acceleration, the greater the change in velocity over a given time. Acceleration is widely seen in experimental physics. In...
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机器学习和用于加速合成的自主系统.

Matthew A McDonald1, Klavs F Jensen2

  • 11Department of Chemical and Biological Engineering, Drexel University, Philadelphia, Pennsylvania, USA;

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PubMed
概括
此摘要是机器生成的。

使用机器学习 (ML) 和实验室自动化的自动化系统加速有机合成的发现. 化学分析的进步,特别是净化和结构阐明,是克服这些ML驱动平台当前瓶的关键.

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科学领域:

  • 化学 化学 化学
  • 人工智能的人工智能
  • 实验室自动化 实验室自动化

背景情况:

  • 集成机器学习 (ML) 和实验室自动化的自动化系统正在彻底改变合成化学.
  • 这些系统允许闭环实验,用于反应规划,执行和优化.

研究的目的:

  • 审查有机合成自主系统的最新情况.
  • 专注于驱动这些系统的组件,配置和ML算法.
  • 识别系统设计和应用中的趋势和瓶.

主要方法:

  • 对反应发现和分子优化进行代表性自主系统的调查.
  • 将流量和批量配置进行比较.
  • 检查净化,分析测量和结构阐明 (MS,NMR) 的进展.

主要成果:

  • 机器学习和自动化正在通过闭环实验改变合成化学.
  • 净化和结构阐明意想不到的产品仍然存在关键瓶.
  • 最近的进展包括染色学方法的开发和基于ML的复杂混合物的定量化.

结论:

  • 化学分析中的启用技术对于推进自主合成平台至关重要.
  • 机器学习和自动化有机会加速超越特定领域应用的合成发现.
  • 在化学分析中进一步整合机器学习和自动化将提高发现的速度.