(* Content-type: application/vnd.wolfram.mathematica *) (*** Wolfram Notebook File ***) (* http://www.wolfram.com/nb *) (* CreatedBy='Mathematica 10.2' *) (*CacheID: 234*) (* Internal cache information: NotebookFileLineBreakTest NotebookFileLineBreakTest NotebookDataPosition[ 158, 7] NotebookDataLength[ 755358, 13928] NotebookOptionsPosition[ 751914, 13815] NotebookOutlinePosition[ 752267, 13831] CellTagsIndexPosition[ 752224, 13828] WindowFrame->Normal*) (* Beginning of Notebook Content *) Notebook[{ Cell[CellGroupData[{ Cell[TextData[{ "Oscilador harmonico simples, ", Cell[BoxData[ FormBox[ RowBox[{ SuperscriptBox[ SubscriptBox["c", "s"], "2"], "=", "1"}], TraditionalForm]]], ", k=1:\n\n\t", Cell[BoxData[ FormBox[ RowBox[{ RowBox[{ OverscriptBox[ SubscriptBox["\[Delta]", "r"], "\[DoubleDot]"], "-", RowBox[{ SuperscriptBox["\[Del]", "2"], SubscriptBox["\[Delta]", "r"]}]}], "=", RowBox[{ RowBox[{ RowBox[{"0", " ", "\[DoubleLongRightArrow]", " ", OverscriptBox[ SubscriptBox["\[Delta]", 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