<phyphox version="1.6">
    <title>Two Car Study 3</title>
    <category>PocketLab Voyager</category>
    <description>Oscillating Carts
	
	Voyager A is scanned first, then Voyager B is scanned.  They are identified as A and B in the graphs.
	
	https://www.thepocketlab.com/support/lesson/periodic-motion-pair-physics-carts-experiment-and-theory
	
	</description>
<icon 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
</icon>
     
    <data-containers>
        <container size="0">dA</container>
        <container size="0">dRawA</container>
		<container size="0">dCalA</container>
		<container size="0">tRawA</container>
		<container size="0">tA</container>
		<container size="0">dB</container>
        <container size="0">dRawB</container>
		<container size="0">dCalB</container>
		<container size="0">tRawB</container>
		<container size="0">tB</container>
		<container size="1">nA</container>
        <container size="1">nA-1</container>
        <container size="1">tmaxA</container>
    </data-containers>
    <input>
        <bluetooth name="PL Voyager" mode="notification" id="A Rangefinder">
            <config char="F000AA12-0452-4000-B000-000000000000" conversion="hexadecimal">0132</config>
            <output char="F000AA13-0452-4000-B000-000000000000" conversion="int16BigEndian">dRawA</output>
			<output char="F000AA13-0452-4000-B000-000000000000" extra="time">tRawA</output>

		</bluetooth>
		<bluetooth name="PL Voyager" mode="notification" id="B Rangefinder">
            <config char="F000AA12-0452-4000-B000-000000000000" conversion="hexadecimal">0132</config>
            <output char="F000AA13-0452-4000-B000-000000000000" conversion="int16BigEndian">dRawB</output>
			<output char="F000AA13-0452-4000-B000-000000000000" extra="time">tRawB</output>
		</bluetooth>
	</input>
    <views>
        <view label="Rangefinder">
            <graph label="PocketLab Voyager (A) Rangefinder" aspectRatio="4" labelX="t (s)" labelY="distance (m)" partialUpdate="true">
                <input axis="x">tA</input>
                <input axis="y">dA</input>
            </graph>
			<graph label="PocketLab Voyager (B) Rangefinder" aspectRatio="4" labelX="t (s)" labelY="distance (m)" partialUpdate="true">
                <input axis="x">tB</input>
                <input axis="y">dB</input>
            </graph>
        </view>
    </views>
    <analysis>
        <multiply>
            <input clear="false">dRawA</input>
            <input type="value">0.001</input> 
            <output clear="true">dCalA</output>
        </multiply>
		<count>
            <input clear="false">dCalA</input>
            <output>nA</output>
        </count>
        <subtract>
            <input clear="false">nA</input>
            <input type="value">1</input>
            <output>nA-1</output>
        </subtract>
        <multiply>
            <input type="value">0.02</input>
            <input clear="false">nA-1</input>
            <output>tmaxA</output>
        </multiply>
        <ramp>
            <input as="start" type="value">0</input>
            <input as="stop" clear="false">tmaxA</input>
            <input as="length" clear="false">nA</input>
            <output>tRawA</output>
        </ramp>
		<rangefilter>
            <input clear="false">tRawA</input>
            <input clear="false">dCalA</input>
            <input as="max" type="value">2.2</input>
            <output>tA</output>
            <output>dA</output>
        </rangefilter>
		<multiply>
            <input clear="false">dRawB</input>
            <input type="value">0.001</input> 
            <output clear="true">dCalB</output>
        </multiply>
		<rangefilter>
            <input clear="false">tRawB</input>
            <input clear="false">dCalB</input>
            <input as="max" type="value">2.2</input>
            <output>tB</output>
            <output>dB</output>
        </rangefilter>
    </analysis>
    <export>
        <set name="Two Car Study 2 (Rangefinders)">
            <data name="Voyager A Time (s)">tA</data>
            <data name="Voyager A Position (m)">dA</data>
            <data name="Voyager B Position (m)">dB</data>
        </set>
    </export>	
</phyphox>
