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How to tell if somethign is acceleratin from a position tiem graph? 


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To determine if something is accelerating from a position-time graph, you can analyze the shape of the graph. If the graph has a curved shape, it indicates that the object is accelerating. The steeper the curve, the greater the acceleration. This is because acceleration is the rate of change of velocity, and a curved graph represents a changing velocity. On the other hand, if the graph is a straight line, it indicates that the object is moving at a constant velocity and not accelerating.

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The paper does not provide information on how to determine acceleration from a position-time graph.
To determine if something is accelerating from a position-time graph, look for a curved line indicating a change in velocity over time.
Open accessPosted ContentDOI
19 Mar 2023
To determine if something is accelerating from a position-time graph, look for a curved line indicating a changing velocity.
The article proposes a test statistic based on the kernel method to determine correlation between latent position random graphs.
The paper proposes a method for selecting optimal sensor positions using graph localization operators, which can determine acceleration from a position-time graph.

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