Mathcad Professional 13.0 <description/> <author>Authorized User</author> <company/> <keywords/> <revisedBy>Authorized User</revisedBy> </userData> <identityInfo> <revision>3</revision> <documentID>4c287794-2755-43ff-8a49-a64f36f95c2a</documentID> <versionID>cb8563a6-f414-4515-ac6c-67b5e6ee66aa</versionID> <parentVersionID>00000000-0000-0000-0000-000000000000</parentVersionID> <branchID>00000000-0000-0000-0000-000000000000</branchID> </identityInfo> </metadata> <settings> <presentation> <textRendering> <textStyles> <textStyle name="Normal"> <blockAttr margin-left="0" margin-right="0" text-indent="0" text-align="left" list-style-type="none" tabs="inherit"/> <inlineAttr font-family="Times New Roman" font-charset="0" font-size="12" font-weight="normal" font-style="normal" underline="false" line-through="false" vertical-align="baseline"/> </textStyle> <textStyle name="Heading 1"> <blockAttr margin-left="0" margin-right="0" text-indent="inherit" text-align="left" list-style-type="inherit" 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text-align="center" list-style-type="inherit" tabs="inherit"/> <inlineAttr font-family="Times New Roman" font-charset="0" font-size="24" font-weight="bold" font-style="normal" underline="false" line-through="false" vertical-align="baseline"/> </textStyle> <textStyle name="Subtitle" base-style="Title"> <blockAttr margin-left="0" margin-right="0" text-indent="inherit" text-align="center" list-style-type="inherit" tabs="inherit"/> <inlineAttr font-family="Times New Roman" font-charset="0" font-size="18" font-weight="normal" font-style="normal" underline="false" line-through="false" vertical-align="baseline"/> </textStyle> <textStyle name="Header 2" base-style="Normal"> <blockAttr margin-left="0" margin-right="0" text-indent="0" text-align="left" list-style-type="inherit" tabs="inherit"/> <inlineAttr font-family="Verdana" font-charset="0" font-size="10" font-weight="bold" font-style="normal" underline="false" line-through="false" vertical-align="baseline" color="#000080"/> </textStyle> </textStyles> </textRendering> <mathRendering equation-color="#000"> <operators multiplication="narrow-dot" derivative="derivative" literal-subscript="large" definition="colon-equal" global-definition="triple-equal" local-definition="left-arrow" equality="bold-equal" symbolic-evaluation="right-arrow"/> <mathStyles> <mathStyle name="Variables" font-family="Times New Roman" font-charset="0" font-size="12" font-weight="normal" font-style="normal" underline="false"/> <mathStyle name="Constants" font-family="Times New Roman" font-charset="0" font-size="12" font-weight="normal" font-style="normal" underline="false"/> <mathStyle name="User 1" font-family="Arial" font-charset="0" font-size="10" font-weight="normal" font-style="normal" underline="false"/> <mathStyle name="User 2" font-family="Courier New" font-charset="0" font-size="10" font-weight="normal" font-style="normal" underline="false"/> <mathStyle name="User 3" font-family="Arial" font-charset="0" font-size="10" font-weight="bold" font-style="normal" underline="false"/> <mathStyle name="User 4" font-family="Times New Roman" font-charset="0" font-size="10" font-weight="normal" font-style="italic" underline="false"/> <mathStyle name="User 5" font-family="Times New Roman" font-charset="0" font-size="10" font-weight="normal" font-style="normal" underline="false"/> <mathStyle name="User 6" font-family="Arial" font-charset="0" font-size="10" font-weight="normal" font-style="normal" underline="false"/> <mathStyle name="User 7" font-family="Times New Roman" font-charset="0" font-size="10" font-weight="normal" font-style="normal" underline="false"/> <mathStyle name="Math Text Font" font-family="Times New Roman" font-charset="0" font-size="14" font-weight="normal" font-style="normal" underline="false"/> </mathStyles> <dimensionNames mass="mass" length="length" time="time" current="current" thermodynamic-temperature="temperature" luminous-intensity="luminosity" amount-of-substance="substance"/> <symbolics derivation-steps-style="vertical-insert" show-comments="false" evaluate-in-place="false"/> <results> <general precision="3" show-trailing-zeros="false" radix="dec" complex-threshold="10" exponential-threshold="3" imaginary-value="i" zero-threshold="15"/> <matrix display-style="auto" expand-nested-arrays="false"/> <unit format-units="true" simplify-units="true" fractional-unit-exponent="false"/> </results> </mathRendering> <pageModel show-page-frame="false" show-header-frame="false" show-footer-frame="false" header-footer-start-page="1" paper-code="1" orientation="portrait" print-single-page-width="false" page-width="612" page-height="792"> <margins left="86.4" right="86.4" top="86.4" bottom="86.4"/> <header use-full-page-width="false"/> <footer use-full-page-width="false"/> </pageModel> <colorModel background-color="#fff" default-highlight-color="#ffff80"/> <language math="EN" UI="EN"/> </presentation> <calculation> <builtInVariables array-origin="0" convergence-tolerance="0.001" constraint-tolerance="0.001" random-seed="1" prn-precision="4" prn-col-width="8"/> <calculationBehavior automatic-recalculation="true" matrix-strict-singularity-check="false" optimize-expressions="false" exact-boolean="true" strings-use-origin="false" zero-over-zero="0"> <compatibility multiple-assignment="MC11" local-assignment="MC11"/> </calculationBehavior> <units> <currentUnitSystem name="si" customized="false"/> </units> </calculation> <editor protection-level="none" view-annotations="false" view-regions="false"> <ruler is-visible="false" ruler-unit="in"> <tabs> <tab show-guide="true" position="360"/> </tabs> </ruler> <plotTemplate> <xy item-idref="1"/> </plotTemplate> <grid granularity-x="6" granularity-y="6"/> </editor> <fileFormat image-type="image/png" image-quality="75" save-numeric-results="true" exclude-large-results="false" save-text-images="false" screen-dpi="96"/> <miscellaneous> <handbook handbook-region-tag-ub="150" can-delete-original-handbook-regions="true" can-delete-user-regions="true" can-print="true" can-copy="true" can-save="true" file-permission-mask="4294967295"/> </miscellaneous> </settings> <regions> <region region-id="83" left="6" top="12.75" width="84.75" height="14.25" align-x="24" align-y="24" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Heading 2" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Waterfall Plots </p> </text> </region> <region region-id="136" left="6" top="30.75" width="77.25" height="13.5" align-x="23.25" align-y="42" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="false"> <p style="Heading 2" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit"> <i>Mathcad Staff</i> </p> </text> </region> <region region-id="84" left="6" top="66.75" width="349.5" height="42.75" align-x="6" align-y="78" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="0" margin-right="0" text-indent="inherit" text-align="left" list-style-type="inherit" tabs="inherit">Waterfall plots are plots of the same process or data repeated for slightly different values of a single parameter. You can make both 2D and 3D waterfall plots in Mathcad</p> </text> </region> <region region-id="10" left="6" top="126.75" width="100.5" height="14.25" align-x="6" align-y="138" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Heading 2" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">2D Waterfall Plots</p> </text> <indexes> <phrase>waterfall plots</phrase> <phrase>2D waterfall plots</phrase> <phrase>plots, waterfall</phrase> </indexes> </region> <region region-id="11" left="6" top="144.75" width="350.25" height="42.75" align-x="6" align-y="156" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">The 2D waterfall plot packs all the response data values into columns of a y matrix, and the input values into columns of an x matrix. The 2D plot pairs the columns and creates multiple traces.</p> </text> </region> <region region-id="12" left="42" top="204.75" width="243" height="66.75" align-x="56.25" align-y="216" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <component hide-arguments="false" clsid-buddy="a6cfc4d6-3a88-437d-94de-30d1a591cf29" item-idref="2" disable-calc="false"> <inputs/> <outputs> <ml:id xml:space="preserve" xmlns:ml="http://schemas.mathsoft.com/math20">y</ml:id> </outputs> </component> <rendering item-idref="3"/> </region> <region region-id="139" left="6" top="288.75" width="247.5" height="14.25" align-x="8.25" align-y="300" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">The y data is contained in a scrolling table</p> </text> </region> <region region-id="101" left="78" top="318.75" width="78.75" height="15.75" align-x="123" align-y="330" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:eval xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:apply> <ml:id xml:space="preserve">rows</ml:id> <ml:id xml:space="preserve">y</ml:id> </ml:apply> <result xmlns="http://schemas.mathsoft.com/math20"> <ml:real>101</ml:real> </result> </ml:eval> </math> <rendering item-idref="4"/> </region> <region region-id="122" left="192" top="318.75" width="68.25" height="15.75" align-x="232.5" align-y="330" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:eval xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:apply> <ml:id xml:space="preserve">cols</ml:id> <ml:id xml:space="preserve">y</ml:id> </ml:apply> <result xmlns="http://schemas.mathsoft.com/math20"> <ml:real>16</ml:real> </result> </ml:eval> </math> <rendering item-idref="5"/> </region> <region region-id="140" left="6" top="342.75" width="334.5" height="28.5" align-x="13.5" align-y="354" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Use a range variable to define a vector of x values with the same number of rows as the y data:</p> </text> </region> <region region-id="142" left="78" top="384.75" width="94.5" height="15.75" align-x="90" align-y="396" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:id xml:space="preserve">j</ml:id> <ml:range> <ml:real>0</ml:real> <ml:apply> <ml:minus/> <ml:apply> <ml:id xml:space="preserve">rows</ml:id> <ml:id xml:space="preserve">y</ml:id> </ml:apply> <ml:real>1</ml:real> </ml:apply> </ml:range> </ml:define> </math> <rendering item-idref="6"/> </region> <region region-id="141" left="192" top="376.5" width="85.5" height="33.75" align-x="233.25" align-y="396" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:apply> <ml:indexer/> <ml:id xml:space="preserve">xrange</ml:id> <ml:id xml:space="preserve">j</ml:id> </ml:apply> <ml:apply> <ml:minus/> <ml:apply> <ml:div/> <ml:id xml:space="preserve">j</ml:id> <ml:real>10</ml:real> </ml:apply> <ml:real>2</ml:real> </ml:apply> </ml:define> </math> <rendering item-idref="7"/> </region> <region region-id="143" left="6" top="432.75" width="267" height="14.25" align-x="6" align-y="444" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="0" text-align="inherit" list-style-type="none" tabs="inherit">You can plot the y data versus this x vector:</p> </text> </region> <region region-id="58" left="24" top="462" width="244.5" height="151.5" align-x="24" align-y="462" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <plot disable-calc="false" item-idref="8"/> <rendering item-idref="9"/> </region> <region region-id="16" left="6" top="630.75" width="348.75" height="57" align-x="6" align-y="642" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">However, if you wish to provide an offset for each x value as well as each y value, you need to create an x matrix as well. The x and y values must be offset slightly for each column so that the otherwise overlapping traces can be made visible.</p> </text> </region> <region region-id="104" left="36" top="690.75" width="88.5" height="15.75" align-x="46.5" align-y="702" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:id xml:space="preserve">i</ml:id> <ml:range> <ml:real>0</ml:real> <ml:apply> <ml:minus/> <ml:apply> <ml:id xml:space="preserve">cols</ml:id> <ml:id xml:space="preserve">y</ml:id> </ml:apply> <ml:real>1</ml:real> </ml:apply> </ml:range> </ml:define> </math> <rendering item-idref="10"/> </region> <region region-id="105" left="36" top="726.75" width="63.75" height="15.75" align-x="74.25" align-y="738" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:id xml:space="preserve">xoffset</ml:id> <ml:real>0.2</ml:real> </ml:define> </math> <rendering item-idref="11"/> </region> <region region-id="106" left="36" top="746.25" width="120" height="20.25" align-x="66" align-y="762" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:apply> <ml:matcol/> <ml:id xml:space="preserve">xo</ml:id> <ml:id xml:space="preserve">i</ml:id> </ml:apply> <ml:apply> <ml:plus/> <ml:id xml:space="preserve">xrange</ml:id> <ml:apply> <ml:mult style="default"/> <ml:id xml:space="preserve">i</ml:id> <ml:id xml:space="preserve">xoffset</ml:id> </ml:apply> </ml:apply> </ml:define> </math> <rendering item-idref="12"/> </region> <region region-id="145" left="6" top="774.75" width="219" height="14.25" align-x="15.75" align-y="786" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Type [Ctrl][6] to enter the column operator.</p> </text> </region> <region region-id="107" left="30" top="810.75" width="69.75" height="15.75" align-x="68.25" align-y="822" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:id xml:space="preserve">yoffset</ml:id> <ml:real>0.03</ml:real> </ml:define> </math> <rendering item-idref="13"/> </region> <region region-id="108" left="30" top="830.25" width="105.75" height="20.25" align-x="60" align-y="846" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:apply> <ml:matcol/> <ml:id xml:space="preserve">yo</ml:id> <ml:id xml:space="preserve">i</ml:id> </ml:apply> <ml:apply> <ml:plus/> <ml:apply> <ml:matcol/> <ml:id xml:space="preserve">y</ml:id> <ml:id xml:space="preserve">i</ml:id> </ml:apply> <ml:apply> <ml:mult style="default"/> <ml:id xml:space="preserve">i</ml:id> <ml:id xml:space="preserve">yoffset</ml:id> </ml:apply> </ml:apply> </ml:define> </math> <rendering item-idref="14"/> </region> <region region-id="22" left="30" top="882" width="244.5" height="151.5" align-x="30" align-y="882" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <plot disable-calc="false" item-idref="15"/> <rendering item-idref="16"/> </region> <region region-id="23" left="6" top="1044.75" width="351" height="57" align-x="6" align-y="1056" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Note that the offset means that only the first trace retains the correct data values according to the numbering on the plot. If you do not wish to display numbers on the axes, double-click the plot and deselect <b>Numbered</b> on the <b>X-Y Axes tab</b>. </p> </text> </region> <region region-id="147" left="0" top="1110" width="6000" height="6" align-x="0" align-y="1110" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <pageBreak/> </region> <region region-id="148" left="12" top="1122" width="327" height="285.75" align-x="12" align-y="1122" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <png item-idref="17" display-width="325.5" display-height="284.25"/> <rendering item-idref="18"/> </region> <region region-id="24" left="6" top="1434.75" width="349.5" height="28.5" align-x="6" align-y="1446" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">If you have traces of unequal lengths to display in this fashion, you can pack the empty entries in the array with NaNs (Not a Number).</p> </text> </region> <region region-id="67" left="24" top="1470.75" width="74.25" height="15.75" align-x="60" align-y="1482" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:id xml:space="preserve">empty</ml:id> <ml:range> <ml:real>0</ml:real> <ml:real>17</ml:real> </ml:range> </ml:define> </math> <rendering item-idref="19"/> </region> <region region-id="68" left="24" top="1488.75" width="96" height="17.25" align-x="86.25" align-y="1500" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:apply> <ml:indexer/> <ml:id xml:space="preserve">yo</ml:id> <ml:sequence> <ml:id xml:space="preserve">empty</ml:id> <ml:real>12</ml:real> </ml:sequence> </ml:apply> <ml:id xml:space="preserve">NaN</ml:id> </ml:define> </math> <rendering item-idref="20"/> </region> <region region-id="69" left="144" top="1488.75" width="112.5" height="17.25" align-x="222.75" align-y="1500" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <math optimize="false" disable-calc="false"> <ml:define xmlns:ml="http://schemas.mathsoft.com/math20"> <ml:apply> <ml:indexer/> <ml:id xml:space="preserve">yo</ml:id> <ml:sequence> <ml:apply> <ml:plus/> <ml:id xml:space="preserve">empty</ml:id> <ml:real>83</ml:real> </ml:apply> <ml:real>15</ml:real> </ml:sequence> </ml:apply> <ml:id xml:space="preserve">NaN</ml:id> </ml:define> </math> <rendering item-idref="21"/> </region> <region region-id="28" left="18" top="1524" width="262.5" height="151.5" align-x="18" align-y="1524" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <plot disable-calc="false" item-idref="22"/> <rendering item-idref="23"/> </region> <region region-id="29" left="6" top="1686.75" width="360.75" height="14.25" align-x="6" align-y="1698" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">The NaN entries are not displayed, leaving blanks in the line.</p> </text> </region> <region region-id="149" left="0" top="1710" width="6000" height="6" align-x="0" align-y="1710" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <pageBreak/> </region> <region region-id="31" left="6" top="1722.75" width="93" height="14.25" align-x="6" align-y="1734" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit"> <b>3D Waterfall Plots</b> </p> </text> </region> <region region-id="32" left="6" top="1740.75" width="349.5" height="99.75" align-x="6" align-y="1752" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">You can achieve a similar effect using a 3D scatter plot and the y-values only. </p> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit"/> <p style="Normal" margin-left="0" margin-right="0" text-indent="0" text-align="inherit" list-style-type="disc" tabs="inherit">Choose<b> <sp/> </b> <inlineAttr font-weight="normal">3D Scatter Plot</inlineAttr> from the<inlineAttr font-weight="normal"> <sp/> </inlineAttr> <b>Insert > Graph</b> menu.<sp count="2"/> </p> <p style="Normal" margin-left="0" margin-right="0" text-indent="0" text-align="inherit" list-style-type="disc" tabs="inherit">Enter the y matrix in the placeholder, </p> <p style="Normal" margin-left="0" margin-right="0" text-indent="0" text-align="inherit" list-style-type="disc" tabs="inherit">Double-click the plot to bring up the <b>3-D Plot Format</b> dialog. </p> <p style="Normal" margin-left="0" margin-right="0" text-indent="0" text-align="left" list-style-type="disc" tabs="inherit">Select the <b>Appearance</b> tab. Under Line Options, select Lines, and under Point Options, deselect Draw Points.</p> </text> <indexes> <phrase>3D waterfall plots</phrase> <phrase>waterfall plots, 3D</phrase> </indexes> </region> <region region-id="137" left="36" top="1866" width="302.25" height="225" align-x="36" align-y="1866" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <png item-idref="24" display-width="300.75" display-height="223.5"/> <rendering item-idref="25"/> </region> <region region-id="150" left="0" top="2118" width="6000" height="6" align-x="0" align-y="2118" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <pageBreak/> </region> <region region-id="123" left="24" top="2124.75" width="240" height="14.25" align-x="24" align-y="2136" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <text use-page-width="false" push-down="false" lock-width="true"> <p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="0" text-align="inherit" list-style-type="none" tabs="inherit">Your plot should look like the one below.</p> </text> </region> <region region-id="132" left="42" top="2148" width="264.75" height="240.75" align-x="173.25" align-y="2148" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag=""> <component hide-arguments="false" clsid-buddy="62e334b8-fdda-4b2b-9bb4-48def95f2af1" item-idref="26" disable-calc="false"> <inputs> <ml:id xml:space="preserve" xmlns:ml="http://schemas.mathsoft.com/math20">y</ml:id> </inputs> <outputs/> </component> <rendering item-idref="27"/> </region> </regions> <binaryContent> <item item-id="1" content-encoding="gzip">H4sIAAAAAAAA/4yNvQ6CQBCEdzlQwd/GGhMbj9InsCBWJj6CnvifEA1SWPrm5+yCvUf2GGa/ GQZExBiHSVQb3OPjcnep3PO6Oz+q0tURyZljYrVzVzu1aIHplcX2cD8VdWPtmxcFM1ym7Z9K 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