如何计算纸带的平均加速度?

2025-03-16 00:16:57
推荐回答(4个)
回答1:

平均加速度定义:各段位移中加速度的平均值。(各段指的不一定是连着的小段)Ⅰ通过求各点瞬时速度求平均加速度 已知五个点后四个1,2,3,4对应瞬时速度为v1,v2,v3,v4,T为计数点之间时间间隔。 方法1(通常不采用):a1=(v2-v1)/T,a2=(v3-v2)/T, a3=(v4-v3)/T a(均)=(a1+a2+a3)/n=(v4-v1)/3T 可见,结果中只包含v4与v1,结果不准确。 方法2(等间隔逐差法):与方法1不同,此法取间隔13,24,(须共取偶数个点)a1=(v3-v1)/2T,a2=(v4-v2)/2T, a(均)=(a1+a2)/2=(v3+v4-v1-v2)/4T 此法各点均计入,较准确。Ⅱ通过测量各段位移求平均加速度 同上,应用逐差法,即已知各点到前一点位移,根据Δx=at^2(注意,t不是T,此题中t=2T),a1=(Δ13/T^2)/2,a2=(Δ24/T^2)/2,a均=(a1+a2)/2=(s4+s3-s2-s1)/4t^2

回答2:

根据这个公式啊,a=(s1+s2+s3+s4)/(4T�0�5)s1代表第1段的距离,s2代表第2段的距离,以此类推4代表段数,T表示打点计时器打点间隔一般地,对于n段纸带,位移差不同,全段的平均加速度为a=(s1+s2+s3+....+sn)/(nT�0�5)

回答3:

平均加速度=(S4+S3)-(S2+S1) 再除以(2T)平方 T为相邻的时间间隔我们刚刚复习到这,嘿嘿希望能帮到你 o(∩_∩)o

回答4:

△X=aT*T,T是时间间隔,△X是距离,谢谢!请采纳!

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