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The Chemical entity type includes Hildebrand solubility \ parameters, which are suitable for nonpolar solvents. Hansen parameters \ extend this model to treat polar and hydrogen-bonding systems. \n\nThis data \ resource consists of 211 common solvents at 25\[Degree]C, identified as \ Chemical entities and InChiKeys. (As discussed in the Chemical entity \ documentation, the entities include CAS, PubChem, SMILES, and InChI string \ identifiers, among many other properties.)", "Keywords" -> { "solubility", "solvent", "chemical engineering", "polymer", "solute", "solvent"}, "ExternalLinks" -> { "https://www.hansen-solubility.com/contents/HSP_Calculations.xlsx", "https://en.wikipedia.org/wiki/Hansen_solubility_parameter"}, "Originator" -> "W. Zeng, Y. Du, Y. Xue & H. L. 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15}], FontColor -> RGBColor[ 0.27450980392156865`, 0.5372549019607843, 0.792156862745098]]], "LinkHand"], {"MouseClicked", 1} :> TypeSystem`NestedGrid`PackagePrivate`updateState[ TypeSystem`NestedGrid`PackagePrivate`$state$$, TypeSystem`NestedGrid`PackagePrivate`$path$$, TypeSystem`NestedGrid`PackagePrivate`$pos$$, TypeSystem`NestedGrid`PackagePrivate`$grid$$, 1546732944][{All, "\[Delta]d"}]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[All, "\[Delta]d"]], "Mouse"], Background -> GrayLevel[0.95], Alignment -> {Left, Baseline}], Item[ Annotation[ EventHandler[ MouseAppearance[ Mouseover[ Pane[ RawBoxes[ StyleBox[ "\"\[Delta]p\"", FontColor -> GrayLevel[0.4]]], {{ 20, Full}, 15}], Style[ Pane[ RawBoxes[ StyleBox[ "\"\[Delta]p\"", FontColor -> RGBColor[ 0.27450980392156865`, 0.5372549019607843, 0.792156862745098]]], {{20, Full}, 15}], FontColor -> RGBColor[ 0.27450980392156865`, 0.5372549019607843, 0.792156862745098]]], "LinkHand"], {"MouseClicked", 1} :> TypeSystem`NestedGrid`PackagePrivate`updateState[ TypeSystem`NestedGrid`PackagePrivate`$state$$, TypeSystem`NestedGrid`PackagePrivate`$path$$, TypeSystem`NestedGrid`PackagePrivate`$pos$$, TypeSystem`NestedGrid`PackagePrivate`$grid$$, 1546732944][{All, "\[Delta]p"}]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[All, "\[Delta]p"]], "Mouse"], Background -> GrayLevel[0.95], Alignment -> {Left, Baseline}], Item[ Annotation[ EventHandler[ MouseAppearance[ Mouseover[ Pane[ RawBoxes[ StyleBox[ "\"\[Delta]h\"", FontColor -> GrayLevel[0.4]]], {{ 20, Full}, 15}], Style[ Pane[ RawBoxes[ StyleBox[ "\"\[Delta]h\"", FontColor -> RGBColor[ 0.27450980392156865`, 0.5372549019607843, 0.792156862745098]]], {{20, Full}, 15}], FontColor -> RGBColor[ 0.27450980392156865`, 0.5372549019607843, 0.792156862745098]]], "LinkHand"], {"MouseClicked", 1} :> TypeSystem`NestedGrid`PackagePrivate`updateState[ TypeSystem`NestedGrid`PackagePrivate`$state$$, TypeSystem`NestedGrid`PackagePrivate`$path$$, TypeSystem`NestedGrid`PackagePrivate`$pos$$, TypeSystem`NestedGrid`PackagePrivate`$grid$$, 1546732944][{All, "\[Delta]h"}]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[All, "\[Delta]h"]], "Mouse"], Background -> GrayLevel[0.95], Alignment -> {Left, Baseline}], Item[ Annotation[ EventHandler[ MouseAppearance[ Mouseover[ Pane[ RawBoxes[ StyleBox[ "\"\[Delta]t\"", FontColor -> GrayLevel[0.4]]], {{ 20, Full}, 15}], Style[ Pane[ RawBoxes[ StyleBox[ "\"\[Delta]t\"", FontColor -> RGBColor[ 0.27450980392156865`, 0.5372549019607843, 0.792156862745098]]], {{20, Full}, 15}], FontColor -> RGBColor[ 0.27450980392156865`, 0.5372549019607843, 0.792156862745098]]], "LinkHand"], {"MouseClicked", 1} :> TypeSystem`NestedGrid`PackagePrivate`updateState[ TypeSystem`NestedGrid`PackagePrivate`$state$$, TypeSystem`NestedGrid`PackagePrivate`$path$$, TypeSystem`NestedGrid`PackagePrivate`$pos$$, TypeSystem`NestedGrid`PackagePrivate`$grid$$, 1546732944][{All, "\[Delta]t"}]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[All, "\[Delta]t"]], "Mouse"], Background -> GrayLevel[0.95], Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox["\"1,1,1-trichloroethane\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[1, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["UOCLXMDMGBRAIB-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[1, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"100.4`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", "\[InvisibleSpace]", "\"mol\""}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[1, Key["Volume"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"17.`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[1, Key["\[Delta]d"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"4.3`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[1, Key["\[Delta]p"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"2.`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[1, Key["\[Delta]h"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"17.6`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[1, Key["\[Delta]t"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox["\"sym-tetrachloroethane\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[2, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["QPFMBZIOSGYJDE-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[2, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"105.2`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", "\[InvisibleSpace]", "\"mol\""}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[2, Key["Volume"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"18.8`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[2, Key["\[Delta]d"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"5.1`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[2, Key["\[Delta]p"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"9.4`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[2, Key["\[Delta]h"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"21.7`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[2, Key["\[Delta]t"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox["\"1,1-dichloroethane\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[3, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["SCYULBFZEHDVBN-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[3, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"84.8`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", "\[InvisibleSpace]", "\"mol\""}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[3, Key["Volume"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"16.6`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[3, Key["\[Delta]d"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"8.2`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[3, Key["\[Delta]p"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"0.4`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[3, Key["\[Delta]h"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"18.4`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[3, Key["\[Delta]t"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox[ "\"1,1-dichloroethylene\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[4, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["LGXVIGDEPROXKC-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[4, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"79.`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", "\[InvisibleSpace]", "\"mol\""}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[4, Key["Volume"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"17.`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[4, Key["\[Delta]d"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"6.8`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[4, Key["\[Delta]p"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"4.5`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[4, Key["\[Delta]h"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"18.8`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[4, Key["\[Delta]t"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox["\"tetralin\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[5, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["CXWXQJXEFPUFDZ-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[5, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"136.`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", "\[InvisibleSpace]", "\"mol\""}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[5, Key["Volume"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"19.6`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[5, Key["\[Delta]d"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"2.`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[5, Key["\[Delta]p"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"2.9`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[5, Key["\[Delta]h"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"20.`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[5, Key["\[Delta]t"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox["\"ethylene dibromide\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[6, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["PAAZPARNPHGIKF-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[6, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"87.`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", "\[InvisibleSpace]", "\"mol\""}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[6, Key["Volume"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"19.6`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[6, Key["\[Delta]d"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"6.8`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[6, Key["\[Delta]p"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"12.1`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[6, Key["\[Delta]h"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"23.9`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[6, Key["\[Delta]t"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox["\"o-dichlorobenzene\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[7, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["RFFLAFLAYFXFSW-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[7, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"112.8`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", "\[InvisibleSpace]", "\"mol\""}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[7, Key["Volume"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"19.2`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[7, Key["\[Delta]d"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"6.3`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[7, Key["\[Delta]p"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"3.3`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[7, Key["\[Delta]h"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"20.5`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[7, Key["\[Delta]t"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox["\"ethylene dichloride\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[8, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["WSLDOOZREJYCGB-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[8, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"79.4`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", "\[InvisibleSpace]", "\"mol\""}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[8, Key["Volume"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"19.`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[8, Key["\[Delta]d"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"7.4`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[8, Key["\[Delta]p"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"4.1`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[8, Key["\[Delta]h"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"20.9`", RowBox[{ SqrtBox["\"MPa\""]}]}], FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[8, Key["\[Delta]t"]]], "Mouse"], ImageSize -> {{75, Full}, Automatic}, Alignment -> {Left, Baseline}]}, { Pane[ Annotation[ RawBoxes[ StyleBox[ "\"1,3-dimethylcyclohexane\"", FontColor -> RGBColor[{ Rational[33, 74], Rational[27, 74], Rational[117, 370]}]]], TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[9, Key["Solvent"]]], "Mouse"], ImageSize -> {{90, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation["SGVUHPSBDNVHKL-UHFFFAOYSA-N", TypeSystem`NestedGrid`PackagePrivate`$SliceMarker[1546732944][ GeneralUtilities`Slice[9, Key["InChIKey"]]], "Mouse"], ImageSize -> {{259.20000000000005`, Full}, Automatic}, Alignment -> {Left, Baseline}], Pane[ Annotation[ RawBoxes[ StyleBox[ RowBox[{"140.`", RowBox[{ SuperscriptBox["\"cm\"", "3"], "\[NegativeMediumSpace]", "\"/\"", 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