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							<u>Empirical Mode Decomposition Extrema</u>
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						<sp count="2"/>function [spmax, spmin, flag]= extrema(in_data)<sp count="22"/>
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					<f family="Times New Roman" charset="0" size="12">INPUT:<sp count="65"/>
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						<sp count="6"/>in_data: Inputted data, a time series to be sifted;<sp count="14"/>
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					<f family="Times New Roman" charset="0" size="12">OUTPUT:<sp count="64"/>
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						<sp count="6"/>spmax: The locations (col 1) of the maxima and its corresponding values (col 2)<sp count="44"/>
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						<sp count="6"/>spmin: The locations (col 1) of the minima and its corresponding values (col 2)<sp count="44"/>
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												<ml:sequence>
													<ml:real>2</ml:real>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
										</ml:apply>
									</ml:localDefine>
									<ml:ifThen>
										<ml:apply>
											<ml:greaterThan/>
											<ml:id xml:space="preserve">temp1</ml:id>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmax</ml:id>
												<ml:sequence>
													<ml:real>1</ml:real>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
										</ml:apply>
										<ml:localDefine>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmax</ml:id>
												<ml:sequence>
													<ml:real>1</ml:real>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
											<ml:id xml:space="preserve">temp1</ml:id>
										</ml:localDefine>
									</ml:ifThen>
									<ml:localDefine>
										<ml:id xml:space="preserve">slope2</ml:id>
										<ml:apply>
											<ml:div/>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmax</ml:id>
													<ml:sequence>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">kk</ml:id>
															<ml:real>1</ml:real>
														</ml:apply>
														<ml:real>2</ml:real>
													</ml:sequence>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmax</ml:id>
													<ml:sequence>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">kk</ml:id>
															<ml:real>2</ml:real>
														</ml:apply>
														<ml:real>2</ml:real>
													</ml:sequence>
												</ml:apply>
											</ml:apply>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmax</ml:id>
													<ml:sequence>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">kk</ml:id>
															<ml:real>1</ml:real>
														</ml:apply>
														<ml:real>1</ml:real>
													</ml:sequence>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmax</ml:id>
													<ml:sequence>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">kk</ml:id>
															<ml:real>2</ml:real>
														</ml:apply>
														<ml:real>1</ml:real>
													</ml:sequence>
												</ml:apply>
											</ml:apply>
										</ml:apply>
									</ml:localDefine>
									<ml:localDefine>
										<ml:id xml:space="preserve">temp2</ml:id>
										<ml:apply>
											<ml:plus/>
											<ml:apply>
												<ml:mult/>
												<ml:id xml:space="preserve">slope2</ml:id>
												<ml:parens>
													<ml:apply>
														<ml:minus/>
														<ml:apply>
															<ml:indexer/>
															<ml:id xml:space="preserve">spmax</ml:id>
															<ml:sequence>
																<ml:id xml:space="preserve">kk</ml:id>
																<ml:real>1</ml:real>
															</ml:sequence>
														</ml:apply>
														<ml:apply>
															<ml:indexer/>
															<ml:id xml:space="preserve">spmax</ml:id>
															<ml:sequence>
																<ml:apply>
																	<ml:minus/>
																	<ml:id xml:space="preserve">kk</ml:id>
																	<ml:real>1</ml:real>
																</ml:apply>
																<ml:real>1</ml:real>
															</ml:sequence>
														</ml:apply>
													</ml:apply>
												</ml:parens>
											</ml:apply>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmax</ml:id>
												<ml:sequence>
													<ml:apply>
														<ml:minus/>
														<ml:id xml:space="preserve">kk</ml:id>
														<ml:real>1</ml:real>
													</ml:apply>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
										</ml:apply>
									</ml:localDefine>
									<ml:ifThen>
										<ml:apply>
											<ml:greaterThan/>
											<ml:id xml:space="preserve">temp2</ml:id>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmax</ml:id>
												<ml:sequence>
													<ml:id xml:space="preserve">kk</ml:id>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
										</ml:apply>
										<ml:localDefine>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmax</ml:id>
												<ml:sequence>
													<ml:id xml:space="preserve">kk</ml:id>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
											<ml:id xml:space="preserve">temp2</ml:id>
										</ml:localDefine>
									</ml:ifThen>
									<ml:otherwise>
										<ml:localDefine>
											<ml:id xml:space="preserve">flag</ml:id>
											<ml:real>-1</ml:real>
										</ml:localDefine>
									</ml:otherwise>
								</ml:program>
							</ml:ifThen>
							<ml:localDefine>
								<ml:id xml:space="preserve">msize</ml:id>
								<ml:apply>
									<ml:id xml:space="preserve">rows</ml:id>
									<ml:id xml:space="preserve">in_data</ml:id>
								</ml:apply>
							</ml:localDefine>
							<ml:localDefine>
								<ml:id xml:space="preserve">dsize</ml:id>
								<ml:apply>
									<ml:id xml:space="preserve">max</ml:id>
									<ml:id xml:space="preserve">msize</ml:id>
								</ml:apply>
							</ml:localDefine>
							<ml:localDefine>
								<ml:id xml:space="preserve">xsize</ml:id>
								<ml:apply>
									<ml:div/>
									<ml:id xml:space="preserve">dsize</ml:id>
									<ml:real>3</ml:real>
								</ml:apply>
							</ml:localDefine>
							<ml:localDefine>
								<ml:id xml:space="preserve">xsize2</ml:id>
								<ml:apply>
									<ml:mult/>
									<ml:real>2</ml:real>
									<ml:id xml:space="preserve">xsize</ml:id>
								</ml:apply>
							</ml:localDefine>
							<ml:localDefine>
								<ml:apply>
									<ml:indexer/>
									<ml:id xml:space="preserve">spmin</ml:id>
									<ml:sequence>
										<ml:real>1</ml:real>
										<ml:real>1</ml:real>
									</ml:sequence>
								</ml:apply>
								<ml:real>1</ml:real>
							</ml:localDefine>
							<ml:localDefine>
								<ml:apply>
									<ml:indexer/>
									<ml:id xml:space="preserve">spmin</ml:id>
									<ml:sequence>
										<ml:real>1</ml:real>
										<ml:real>2</ml:real>
									</ml:sequence>
								</ml:apply>
								<ml:apply>
									<ml:indexer/>
									<ml:id xml:space="preserve">in_data</ml:id>
									<ml:real>1</ml:real>
								</ml:apply>
							</ml:localDefine>
							<ml:localDefine>
								<ml:id xml:space="preserve">jj</ml:id>
								<ml:real>2</ml:real>
							</ml:localDefine>
							<ml:localDefine>
								<ml:id xml:space="preserve">kk</ml:id>
								<ml:real>2</ml:real>
							</ml:localDefine>
							<ml:while>
								<ml:apply>
									<ml:lessThan/>
									<ml:id xml:space="preserve">jj</ml:id>
									<ml:id xml:space="preserve">dsize</ml:id>
								</ml:apply>
								<ml:program>
									<ml:ifThen>
										<ml:apply>
											<ml:and/>
											<ml:apply>
												<ml:greaterOrEqual/>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">in_data</ml:id>
													<ml:apply>
														<ml:minus/>
														<ml:id xml:space="preserve">jj</ml:id>
														<ml:real>1</ml:real>
													</ml:apply>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">in_data</ml:id>
													<ml:id xml:space="preserve">jj</ml:id>
												</ml:apply>
											</ml:apply>
											<ml:apply>
												<ml:lessOrEqual/>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">in_data</ml:id>
													<ml:id xml:space="preserve">jj</ml:id>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">in_data</ml:id>
													<ml:apply>
														<ml:plus/>
														<ml:id xml:space="preserve">jj</ml:id>
														<ml:real>1</ml:real>
													</ml:apply>
												</ml:apply>
											</ml:apply>
										</ml:apply>
										<ml:program>
											<ml:localDefine>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:id xml:space="preserve">kk</ml:id>
														<ml:real>1</ml:real>
													</ml:sequence>
												</ml:apply>
												<ml:id xml:space="preserve">jj</ml:id>
											</ml:localDefine>
											<ml:localDefine>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:id xml:space="preserve">kk</ml:id>
														<ml:real>2</ml:real>
													</ml:sequence>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">in_data</ml:id>
													<ml:id xml:space="preserve">jj</ml:id>
												</ml:apply>
											</ml:localDefine>
											<ml:localDefine>
												<ml:id xml:space="preserve">kk</ml:id>
												<ml:apply>
													<ml:plus/>
													<ml:id xml:space="preserve">kk</ml:id>
													<ml:real>1</ml:real>
												</ml:apply>
											</ml:localDefine>
										</ml:program>
									</ml:ifThen>
									<ml:localDefine>
										<ml:id xml:space="preserve">jj</ml:id>
										<ml:apply>
											<ml:plus/>
											<ml:id xml:space="preserve">jj</ml:id>
											<ml:real>1</ml:real>
										</ml:apply>
									</ml:localDefine>
								</ml:program>
							</ml:while>
							<ml:localDefine>
								<ml:apply>
									<ml:indexer/>
									<ml:id xml:space="preserve">spmin</ml:id>
									<ml:sequence>
										<ml:id xml:space="preserve">kk</ml:id>
										<ml:real>1</ml:real>
									</ml:sequence>
								</ml:apply>
								<ml:id xml:space="preserve">dsize</ml:id>
							</ml:localDefine>
							<ml:localDefine>
								<ml:apply>
									<ml:indexer/>
									<ml:id xml:space="preserve">spmin</ml:id>
									<ml:sequence>
										<ml:id xml:space="preserve">kk</ml:id>
										<ml:real>2</ml:real>
									</ml:sequence>
								</ml:apply>
								<ml:apply>
									<ml:indexer/>
									<ml:id xml:space="preserve">in_data</ml:id>
									<ml:id xml:space="preserve">dsize</ml:id>
								</ml:apply>
							</ml:localDefine>
							<ml:ifThen>
								<ml:apply>
									<ml:greaterThan/>
									<ml:id xml:space="preserve">kk</ml:id>
									<ml:real>4</ml:real>
								</ml:apply>
								<ml:program>
									<ml:localDefine>
										<ml:id xml:space="preserve">slope1</ml:id>
										<ml:apply>
											<ml:div/>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:real>2</ml:real>
														<ml:real>2</ml:real>
													</ml:sequence>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:real>3</ml:real>
														<ml:real>2</ml:real>
													</ml:sequence>
												</ml:apply>
											</ml:apply>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:real>2</ml:real>
														<ml:real>1</ml:real>
													</ml:sequence>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:real>3</ml:real>
														<ml:real>1</ml:real>
													</ml:sequence>
												</ml:apply>
											</ml:apply>
										</ml:apply>
									</ml:localDefine>
									<ml:localDefine>
										<ml:id xml:space="preserve">temp1</ml:id>
										<ml:apply>
											<ml:plus/>
											<ml:apply>
												<ml:mult/>
												<ml:id xml:space="preserve">slope1</ml:id>
												<ml:parens>
													<ml:apply>
														<ml:minus/>
														<ml:apply>
															<ml:indexer/>
															<ml:id xml:space="preserve">spmin</ml:id>
															<ml:sequence>
																<ml:real>1</ml:real>
																<ml:real>1</ml:real>
															</ml:sequence>
														</ml:apply>
														<ml:apply>
															<ml:indexer/>
															<ml:id xml:space="preserve">spmin</ml:id>
															<ml:sequence>
																<ml:real>2</ml:real>
																<ml:real>1</ml:real>
															</ml:sequence>
														</ml:apply>
													</ml:apply>
												</ml:parens>
											</ml:apply>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmin</ml:id>
												<ml:sequence>
													<ml:real>2</ml:real>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
										</ml:apply>
									</ml:localDefine>
									<ml:ifThen>
										<ml:apply>
											<ml:lessThan/>
											<ml:id xml:space="preserve">temp1</ml:id>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmin</ml:id>
												<ml:sequence>
													<ml:real>1</ml:real>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
										</ml:apply>
										<ml:localDefine>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmin</ml:id>
												<ml:sequence>
													<ml:real>1</ml:real>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
											<ml:id xml:space="preserve">temp1</ml:id>
										</ml:localDefine>
									</ml:ifThen>
									<ml:localDefine>
										<ml:id xml:space="preserve">slope2</ml:id>
										<ml:apply>
											<ml:div/>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">kk</ml:id>
															<ml:real>1</ml:real>
														</ml:apply>
														<ml:real>2</ml:real>
													</ml:sequence>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">kk</ml:id>
															<ml:real>2</ml:real>
														</ml:apply>
														<ml:real>2</ml:real>
													</ml:sequence>
												</ml:apply>
											</ml:apply>
											<ml:apply>
												<ml:minus/>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">kk</ml:id>
															<ml:real>1</ml:real>
														</ml:apply>
														<ml:real>1</ml:real>
													</ml:sequence>
												</ml:apply>
												<ml:apply>
													<ml:indexer/>
													<ml:id xml:space="preserve">spmin</ml:id>
													<ml:sequence>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">kk</ml:id>
															<ml:real>2</ml:real>
														</ml:apply>
														<ml:real>1</ml:real>
													</ml:sequence>
												</ml:apply>
											</ml:apply>
										</ml:apply>
									</ml:localDefine>
									<ml:localDefine>
										<ml:id xml:space="preserve">temp2</ml:id>
										<ml:apply>
											<ml:plus/>
											<ml:apply>
												<ml:mult/>
												<ml:id xml:space="preserve">slope2</ml:id>
												<ml:parens>
													<ml:apply>
														<ml:minus/>
														<ml:apply>
															<ml:indexer/>
															<ml:id xml:space="preserve">spmin</ml:id>
															<ml:sequence>
																<ml:id xml:space="preserve">kk</ml:id>
																<ml:real>1</ml:real>
															</ml:sequence>
														</ml:apply>
														<ml:apply>
															<ml:indexer/>
															<ml:id xml:space="preserve">spmin</ml:id>
															<ml:sequence>
																<ml:apply>
																	<ml:minus/>
																	<ml:id xml:space="preserve">kk</ml:id>
																	<ml:real>1</ml:real>
																</ml:apply>
																<ml:real>1</ml:real>
															</ml:sequence>
														</ml:apply>
													</ml:apply>
												</ml:parens>
											</ml:apply>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmin</ml:id>
												<ml:sequence>
													<ml:apply>
														<ml:minus/>
														<ml:id xml:space="preserve">kk</ml:id>
														<ml:real>1</ml:real>
													</ml:apply>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
										</ml:apply>
									</ml:localDefine>
									<ml:ifThen>
										<ml:apply>
											<ml:lessThan/>
											<ml:id xml:space="preserve">temp2</ml:id>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmin</ml:id>
												<ml:sequence>
													<ml:id xml:space="preserve">kk</ml:id>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
										</ml:apply>
										<ml:localDefine>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">spmin</ml:id>
												<ml:sequence>
													<ml:id xml:space="preserve">kk</ml:id>
													<ml:real>2</ml:real>
												</ml:sequence>
											</ml:apply>
											<ml:id xml:space="preserve">temp2</ml:id>
										</ml:localDefine>
									</ml:ifThen>
									<ml:otherwise>
										<ml:localDefine>
											<ml:id xml:space="preserve">flag</ml:id>
											<ml:real>-1</ml:real>
										</ml:localDefine>
									</ml:otherwise>
								</ml:program>
							</ml:ifThen>
							<ml:localDefine>
								<ml:apply>
									<ml:indexer/>
									<ml:id xml:space="preserve">spmin</ml:id>
									<ml:sequence>
										<ml:apply>
											<ml:plus/>
											<ml:id xml:space="preserve">kk</ml:id>
											<ml:real>1</ml:real>
										</ml:apply>
										<ml:real>2</ml:real>
									</ml:sequence>
								</ml:apply>
								<ml:id xml:space="preserve">RlastSpmax</ml:id>
							</ml:localDefine>
							<ml:localDefine>
								<ml:id xml:space="preserve">Out</ml:id>
								<ml:apply>
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