Beschleunigung eines Rennwagens
About points...
We associate a certain number of points with each exercise.
When you click an exercise into a collection, this number will be taken as points for the exercise, kind of "by default".
But once the exercise is on the collection, you can edit the number of points for the exercise in the collection independently, without any effect on "points by default" as represented by the number here.
That being said... How many "default points" should you associate with an exercise upon creation?
As with difficulty, there is no straight forward and generally accepted way.
But as a guideline, we tend to give as many points by default as there are mathematical steps to do in the exercise.
Again, very vague... But the number should kind of represent the "work" required.
When you click an exercise into a collection, this number will be taken as points for the exercise, kind of "by default".
But once the exercise is on the collection, you can edit the number of points for the exercise in the collection independently, without any effect on "points by default" as represented by the number here.
That being said... How many "default points" should you associate with an exercise upon creation?
As with difficulty, there is no straight forward and generally accepted way.
But as a guideline, we tend to give as many points by default as there are mathematical steps to do in the exercise.
Again, very vague... But the number should kind of represent the "work" required.
About difficulty...
We associate a certain difficulty with each exercise.
When you click an exercise into a collection, this number will be taken as difficulty for the exercise, kind of "by default".
But once the exercise is on the collection, you can edit its difficulty in the collection independently, without any effect on the "difficulty by default" here.
Why we use chess pieces? Well... we like chess, we like playing around with \(\LaTeX\)-fonts, we wanted symbols that need less space than six stars in a table-column... But in your layouts, you are of course free to indicate the difficulty of the exercise the way you want.
That being said... How "difficult" is an exercise? It depends on many factors, like what was being taught etc.
In physics exercises, we try to follow this pattern:
Level 1 - One formula (one you would find in a reference book) is enough to solve the exercise. Example exercise
Level 2 - Two formulas are needed, it's possible to compute an "in-between" solution, i.e. no algebraic equation needed. Example exercise
Level 3 - "Chain-computations" like on level 2, but 3+ calculations. Still, no equations, i.e. you are not forced to solve it in an algebraic manner. Example exercise
Level 4 - Exercise needs to be solved by algebraic equations, not possible to calculate numerical "in-between" results. Example exercise
Level 5 -
Level 6 -
When you click an exercise into a collection, this number will be taken as difficulty for the exercise, kind of "by default".
But once the exercise is on the collection, you can edit its difficulty in the collection independently, without any effect on the "difficulty by default" here.
Why we use chess pieces? Well... we like chess, we like playing around with \(\LaTeX\)-fonts, we wanted symbols that need less space than six stars in a table-column... But in your layouts, you are of course free to indicate the difficulty of the exercise the way you want.
That being said... How "difficult" is an exercise? It depends on many factors, like what was being taught etc.
In physics exercises, we try to follow this pattern:
Level 1 - One formula (one you would find in a reference book) is enough to solve the exercise. Example exercise
Level 2 - Two formulas are needed, it's possible to compute an "in-between" solution, i.e. no algebraic equation needed. Example exercise
Level 3 - "Chain-computations" like on level 2, but 3+ calculations. Still, no equations, i.e. you are not forced to solve it in an algebraic manner. Example exercise
Level 4 - Exercise needs to be solved by algebraic equations, not possible to calculate numerical "in-between" results. Example exercise
Level 5 -
Level 6 -
Question
Solution
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Video
\(\LaTeX\)
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Exercise:
Die Position eines Rennwagens der zur Zeit t aus dem Stillstand startet und auf gerader Teststrecke fährt ist in folger Tabelle festgehalten: center tabularx.textwidth|l||X|X|X|X|X|X|X|X|X| hline bf Zeit tsis & . & . & . & . & . & . & . & . & . hline bf Strecke ssim & . & . & . & . & . & . & . & . & . hline tabularx center abcliste abc Berechne mittels quadratischer Regression auf dem Taschenrechner diejenige Funktion welche die Messdaten am Besten repräsentiert. Gib diese Funktion vollständig an. abc Berechne die Beschleunigung des Rennwagens. Beziehe alle oben in der Tabelle angegebenen Daten in deine Berechnung mit ein. Die Berechnung der Beschleunigung aus Einzeldaten gibt keinen Punkt. abcliste
Solution:
abcliste abc Die quadratische Regression des Taschenrechners liefert die folge Funktion: Y_ numpr. X^ + numpr-. X + numpr. abc Die Beschleunigung des Rennwagens ist: fraca &mustbe .meterpersecondsquared a .meterpersecondsquared abcliste
Die Position eines Rennwagens der zur Zeit t aus dem Stillstand startet und auf gerader Teststrecke fährt ist in folger Tabelle festgehalten: center tabularx.textwidth|l||X|X|X|X|X|X|X|X|X| hline bf Zeit tsis & . & . & . & . & . & . & . & . & . hline bf Strecke ssim & . & . & . & . & . & . & . & . & . hline tabularx center abcliste abc Berechne mittels quadratischer Regression auf dem Taschenrechner diejenige Funktion welche die Messdaten am Besten repräsentiert. Gib diese Funktion vollständig an. abc Berechne die Beschleunigung des Rennwagens. Beziehe alle oben in der Tabelle angegebenen Daten in deine Berechnung mit ein. Die Berechnung der Beschleunigung aus Einzeldaten gibt keinen Punkt. abcliste
Solution:
abcliste abc Die quadratische Regression des Taschenrechners liefert die folge Funktion: Y_ numpr. X^ + numpr-. X + numpr. abc Die Beschleunigung des Rennwagens ist: fraca &mustbe .meterpersecondsquared a .meterpersecondsquared abcliste
Meta Information
Exercise:
Die Position eines Rennwagens der zur Zeit t aus dem Stillstand startet und auf gerader Teststrecke fährt ist in folger Tabelle festgehalten: center tabularx.textwidth|l||X|X|X|X|X|X|X|X|X| hline bf Zeit tsis & . & . & . & . & . & . & . & . & . hline bf Strecke ssim & . & . & . & . & . & . & . & . & . hline tabularx center abcliste abc Berechne mittels quadratischer Regression auf dem Taschenrechner diejenige Funktion welche die Messdaten am Besten repräsentiert. Gib diese Funktion vollständig an. abc Berechne die Beschleunigung des Rennwagens. Beziehe alle oben in der Tabelle angegebenen Daten in deine Berechnung mit ein. Die Berechnung der Beschleunigung aus Einzeldaten gibt keinen Punkt. abcliste
Solution:
abcliste abc Die quadratische Regression des Taschenrechners liefert die folge Funktion: Y_ numpr. X^ + numpr-. X + numpr. abc Die Beschleunigung des Rennwagens ist: fraca &mustbe .meterpersecondsquared a .meterpersecondsquared abcliste
Die Position eines Rennwagens der zur Zeit t aus dem Stillstand startet und auf gerader Teststrecke fährt ist in folger Tabelle festgehalten: center tabularx.textwidth|l||X|X|X|X|X|X|X|X|X| hline bf Zeit tsis & . & . & . & . & . & . & . & . & . hline bf Strecke ssim & . & . & . & . & . & . & . & . & . hline tabularx center abcliste abc Berechne mittels quadratischer Regression auf dem Taschenrechner diejenige Funktion welche die Messdaten am Besten repräsentiert. Gib diese Funktion vollständig an. abc Berechne die Beschleunigung des Rennwagens. Beziehe alle oben in der Tabelle angegebenen Daten in deine Berechnung mit ein. Die Berechnung der Beschleunigung aus Einzeldaten gibt keinen Punkt. abcliste
Solution:
abcliste abc Die quadratische Regression des Taschenrechners liefert die folge Funktion: Y_ numpr. X^ + numpr-. X + numpr. abc Die Beschleunigung des Rennwagens ist: fraca &mustbe .meterpersecondsquared a .meterpersecondsquared abcliste
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